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# Implementing a face beautification algorithm with G-API {#tutorial_gapi_face_beautification}
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@prev_tutorial{tutorial_gapi_anisotropic_segmentation}
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[TOC]
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# Introduction {#gapi_fb_intro}
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In this tutorial you will learn:
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* Basics of a sample face beautification algorithm;
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* How to infer different networks inside a pipeline with G-API;
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* How to run a G-API pipeline on a video stream.
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## Prerequisites {#gapi_fb_prerec}
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This sample requires:
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- PC with GNU/Linux or Microsoft Windows (Apple macOS is supported but
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was not tested);
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- OpenCV 4.2 or later built with Intel® Distribution of [OpenVINO™
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Toolkit](https://docs.openvinotoolkit.org/) (building with [Intel®
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TBB](https://www.threadingbuildingblocks.org/intel-tbb-tutorial) is
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a plus);
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- The following topologies from OpenVINO™ Toolkit [Open Model
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Zoo](https://github.com/opencv/open_model_zoo):
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- `face-detection-adas-0001`;
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- `facial-landmarks-35-adas-0002`.
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## Face beautification algorithm {#gapi_fb_algorithm}
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We will implement a simple face beautification algorithm using a
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combination of modern Deep Learning techniques and traditional
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Computer Vision. The general idea behind the algorithm is to make
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face skin smoother while preserving face features like eyes or a
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mouth contrast. The algorithm identifies parts of the face using a DNN
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inference, applies different filters to the parts found, and then
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combines it into the final result using basic image arithmetics:
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\dot
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strict digraph Pipeline {
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node [shape=record fontname=Helvetica fontsize=10 style=filled color="#4c7aa4" fillcolor="#5b9bd5" fontcolor="white"];
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edge [color="#62a8e7"];
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ordering="out";
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splines=ortho;
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rankdir=LR;
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input [label="Input"];
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fd [label="Face\ndetector"];
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bgMask [label="Generate\nBG mask"];
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unshMask [label="Unsharp\nmask"];
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bilFil [label="Bilateral\nfilter"];
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shMask [label="Generate\nsharp mask"];
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blMask [label="Generate\nblur mask"];
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mul_1 [label="*" fontsize=24 shape=circle labelloc=b];
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mul_2 [label="*" fontsize=24 shape=circle labelloc=b];
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mul_3 [label="*" fontsize=24 shape=circle labelloc=b];
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subgraph cluster_0 {
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style=dashed
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fontsize=10
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ld [label="Landmarks\ndetector"];
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label="for each face"
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}
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sum_1 [label="+" fontsize=24 shape=circle];
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out [label="Output"];
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temp_1 [style=invis shape=point width=0];
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temp_2 [style=invis shape=point width=0];
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temp_3 [style=invis shape=point width=0];
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temp_4 [style=invis shape=point width=0];
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temp_5 [style=invis shape=point width=0];
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temp_6 [style=invis shape=point width=0];
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temp_7 [style=invis shape=point width=0];
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temp_8 [style=invis shape=point width=0];
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temp_9 [style=invis shape=point width=0];
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input -> temp_1 [arrowhead=none]
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temp_1 -> fd -> ld
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ld -> temp_4 [arrowhead=none]
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temp_4 -> bgMask
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bgMask -> mul_1 -> sum_1 -> out
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temp_4 -> temp_5 -> temp_6 [arrowhead=none constraint=none]
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ld -> temp_2 -> temp_3 [style=invis constraint=none]
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temp_1 -> {unshMask, bilFil}
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fd -> unshMask [style=invis constraint=none]
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unshMask -> bilFil [style=invis constraint=none]
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bgMask -> shMask [style=invis constraint=none]
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shMask -> blMask [style=invis constraint=none]
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mul_1 -> mul_2 [style=invis constraint=none]
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temp_5 -> shMask -> mul_2
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temp_6 -> blMask -> mul_3
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unshMask -> temp_2 -> temp_5 [style=invis]
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bilFil -> temp_3 -> temp_6 [style=invis]
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mul_2 -> temp_7 [arrowhead=none]
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mul_3 -> temp_8 [arrowhead=none]
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temp_8 -> temp_7 [arrowhead=none constraint=none]
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temp_7 -> sum_1 [constraint=none]
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unshMask -> mul_2 [constraint=none]
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bilFil -> mul_3 [constraint=none]
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temp_1 -> mul_1 [constraint=none]
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}
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\enddot
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Briefly the algorithm is described as follows:
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- Input image \f$I\f$ is passed to unsharp mask and bilateral filters
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(\f$U\f$ and \f$L\f$ respectively);
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- Input image \f$I\f$ is passed to an SSD-based face detector;
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- SSD result (a \f$[1 \times 1 \times 200 \times 7]\f$ blob) is parsed
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and converted to an array of faces;
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- Every face is passed to a landmarks detector;
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- Based on landmarks found for every face, three image masks are
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generated:
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- A background mask \f$b\f$ -- indicating which areas from the
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original image to keep as-is;
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- A face part mask \f$p\f$ -- identifying regions to preserve
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(sharpen).
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- A face skin mask \f$s\f$ -- identifying regions to blur;
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- The final result \f$O\f$ is a composition of features above
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calculated as \f$O = b*I + p*U + s*L\f$.
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Generating face element masks based on a limited set of features (just
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35 per face, including all its parts) is not very trivial and is
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described in the sections below.
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# Constructing a G-API pipeline {#gapi_fb_pipeline}
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## Declaring Deep Learning topologies {#gapi_fb_decl_nets}
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This sample is using two DNN detectors. Every network takes one input
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and produces one output. In G-API, networks are defined with macro
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G_API_NET():
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@snippet cpp/tutorial_code/gapi/face_beautification/face_beautification.cpp net_decl
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To get more information, see
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[Declaring Deep Learning topologies](@ref gapi_ifd_declaring_nets)
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described in the "Face Analytics pipeline" tutorial.
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## Describing the processing graph {#gapi_fb_ppline}
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The code below generates a graph for the algorithm above:
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@snippet cpp/tutorial_code/gapi/face_beautification/face_beautification.cpp ppl
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The resulting graph is a mixture of G-API's standard operations,
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user-defined operations (namespace `custom::`), and DNN inference.
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The generic function `cv::gapi::infer<>()` allows to trigger inference
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within the pipeline; networks to infer are specified as template
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parameters. The sample code is using two versions of `cv::gapi::infer<>()`:
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- A frame-oriented one is used to detect faces on the input frame.
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- An ROI-list oriented one is used to run landmarks inference on a
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list of faces -- this version produces an array of landmarks per
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every face.
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More on this in "Face Analytics pipeline"
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([Building a GComputation](@ref gapi_ifd_gcomputation) section).
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## Unsharp mask in G-API {#gapi_fb_unsh}
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The unsharp mask \f$U\f$ for image \f$I\f$ is defined as:
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\f[U = I - s * L(M(I)),\f]
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where \f$M()\f$ is a median filter, \f$L()\f$ is the Laplace operator,
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and \f$s\f$ is a strength coefficient. While G-API doesn't provide
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this function out-of-the-box, it is expressed naturally with the
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existing G-API operations:
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@snippet cpp/tutorial_code/gapi/face_beautification/face_beautification.cpp unsh
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Note that the code snipped above is a regular C++ function defined
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with G-API types. Users can write functions like this to simplify
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graph construction; when called, this function just puts the relevant
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nodes to the pipeline it is used in.
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# Custom operations {#gapi_fb_proc}
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The face beautification graph is using custom operations
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extensively. This chapter focuses on the most interesting kernels,
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refer to [G-API Kernel API](@ref gapi_kernel_api) for general
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information on defining operations and implementing kernels in G-API.
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## Face detector post-processing {#gapi_fb_face_detect}
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A face detector output is converted to an array of faces with the
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following kernel:
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@snippet cpp/tutorial_code/gapi/face_beautification/face_beautification.cpp vec_ROI
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@snippet cpp/tutorial_code/gapi/face_beautification/face_beautification.cpp fd_pp
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## Facial landmarks post-processing {#gapi_fb_landm_detect}
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The algorithm infers locations of face elements (like the eyes, the mouth
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and the head contour itself) using a generic facial landmarks detector
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(<a href="https://github.com/opencv/open_model_zoo/blob/master/models/intel/facial-landmarks-35-adas-0002/description/facial-landmarks-35-adas-0002.md">details</a>)
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from OpenVINO™ Open Model Zoo. However, the detected landmarks as-is are not
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enough to generate masks --- this operation requires regions of interest on
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the face represented by closed contours, so some interpolation is applied to
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get them. This landmarks
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processing and interpolation is performed by the following kernel:
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@snippet cpp/tutorial_code/gapi/face_beautification/face_beautification.cpp ld_pp_cnts
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The kernel takes two arrays of denormalized landmarks coordinates and
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returns an array of elements' closed contours and an array of faces'
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closed contours; in other words, outputs are, the first, an array of
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contours of image areas to be sharpened and, the second, another one
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to be smoothed.
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Here and below `Contour` is a vector of points.
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### Getting an eye contour {#gapi_fb_ld_eye}
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Eye contours are estimated with the following function:
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@snippet cpp/tutorial_code/gapi/face_beautification/face_beautification.cpp ld_pp_incl
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@snippet cpp/tutorial_code/gapi/face_beautification/face_beautification.cpp ld_pp_eye
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Briefly, this function restores the bottom side of an eye by a
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half-ellipse based on two points in left and right eye
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corners. In fact, `cv::ellipse2Poly()` is used to approximate the eye region, and
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the function only defines ellipse parameters based on just two points:
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- The ellipse center and the \f$X\f$ half-axis calculated by two eye Points;
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- The \f$Y\f$ half-axis calculated according to the assumption that an average
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eye width is \f$1/3\f$ of its length;
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- The start and the end angles which are 0 and 180 (refer to
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`cv::ellipse()` documentation);
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- The angle delta: how much points to produce in the contour;
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- The inclination angle of the axes.
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The use of the `atan2()` instead of just `atan()` in function
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`custom::getLineInclinationAngleDegrees()` is essential as it allows to
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return a negative value depending on the `x` and the `y` signs so we
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can get the right angle even in case of upside-down face arrangement
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(if we put the points in the right order, of course).
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### Getting a forehead contour {#gapi_fb_ld_fhd}
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The function approximates the forehead contour:
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@snippet cpp/tutorial_code/gapi/face_beautification/face_beautification.cpp ld_pp_fhd
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As we have only jaw points in our detected landmarks, we have to get a
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half-ellipse based on three points of a jaw: the leftmost, the
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rightmost and the lowest one. The jaw width is assumed to be equal to the
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forehead width and the latter is calculated using the left and the
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right points. Speaking of the \f$Y\f$ axis, we have no points to get
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it directly, and instead assume that the forehead height is about \f$2/3\f$
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of the jaw height, which can be figured out from the face center (the
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middle between the left and right points) and the lowest jaw point.
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## Drawing masks {#gapi_fb_masks_drw}
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When we have all the contours needed, we are able to draw masks:
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@snippet cpp/tutorial_code/gapi/face_beautification/face_beautification.cpp msk_ppline
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The steps to get the masks are:
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* the "sharp" mask calculation:
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* fill the contours that should be sharpened;
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* blur that to get the "sharp" mask (`mskSharpG`);
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* the "bilateral" mask calculation:
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* fill all the face contours fully;
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* blur that;
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* subtract areas which intersect with the "sharp" mask --- and get the
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"bilateral" mask (`mskBlurFinal`);
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* the background mask calculation:
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* add two previous masks
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* set all non-zero pixels of the result as 255 (by `cv::gapi::threshold()`)
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* revert the output (by `cv::gapi::bitwise_not`) to get the background
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mask (`mskNoFaces`).
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# Configuring and running the pipeline {#gapi_fb_comp_args}
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Once the graph is fully expressed, we can finally compile it and run
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on real data. G-API graph compilation is the stage where the G-API
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framework actually understands which kernels and networks to use. This
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configuration happens via G-API compilation arguments.
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## DNN parameters {#gapi_fb_comp_args_net}
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This sample is using OpenVINO™ Toolkit Inference Engine backend for DL
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inference, which is configured the following way:
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@snippet cpp/tutorial_code/gapi/face_beautification/face_beautification.cpp net_param
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Every `cv::gapi::ie::Params<>` object is related to the network
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specified in its template argument. We should pass there the network
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type we have defined in `G_API_NET()` in the early beginning of the
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tutorial.
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Network parameters are then wrapped in `cv::gapi::NetworkPackage`:
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@snippet cpp/tutorial_code/gapi/face_beautification/face_beautification.cpp netw
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More details in "Face Analytics Pipeline"
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([Configuring the pipeline](@ref gapi_ifd_configuration) section).
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## Kernel packages {#gapi_fb_comp_args_kernels}
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In this example we use a lot of custom kernels, in addition to that we
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use Fluid backend to optimize out memory for G-API's standard kernels
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where applicable. The resulting kernel package is formed like this:
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@snippet cpp/tutorial_code/gapi/face_beautification/face_beautification.cpp kern_pass_1
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## Compiling the streaming pipeline {#gapi_fb_compiling}
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G-API optimizes execution for video streams when compiled in the
|
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"Streaming" mode.
|
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@snippet cpp/tutorial_code/gapi/face_beautification/face_beautification.cpp str_comp
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More on this in "Face Analytics Pipeline"
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([Configuring the pipeline](@ref gapi_ifd_configuration) section).
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## Running the streaming pipeline {#gapi_fb_running}
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In order to run the G-API streaming pipeline, all we need is to
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specify the input video source, call
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`cv::GStreamingCompiled::start()`, and then fetch the pipeline
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processing results:
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|
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@snippet cpp/tutorial_code/gapi/face_beautification/face_beautification.cpp str_src
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@snippet cpp/tutorial_code/gapi/face_beautification/face_beautification.cpp str_loop
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Once results are ready and can be pulled from the pipeline we display
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it on the screen and handle GUI events.
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See [Running the pipeline](@ref gapi_ifd_running) section
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in the "Face Analytics Pipeline" tutorial for more details.
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# Conclusion {#gapi_fb_cncl}
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The tutorial has two goals: to show the use of brand new features of
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G-API introduced in OpenCV 4.2, and give a basic understanding on a
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sample face beautification algorithm.
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The result of the algorithm application:
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![Face Beautification example](pics/example.jpg)
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On the test machine (Intel® Core™ i7-8700) the G-API-optimized video
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pipeline outperforms its serial (non-pipelined) version by a factor of
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**2.7** -- meaning that for such a non-trivial graph, the proper
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pipelining can bring almost 3x increase in performance.
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<!---
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The idea in general is to implement a real-time video stream processing that
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detects faces and applies some filters to make them look beautiful (more or
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less). The pipeline is the following:
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Two topologies from OMZ have been used in this sample: the
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<a href="https://github.com/opencv/open_model_zoo/tree/master/models/intel
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/face-detection-adas-0001">face-detection-adas-0001</a>
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and the
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<a href="https://github.com/opencv/open_model_zoo/blob/master/models/intel
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/facial-landmarks-35-adas-0002/description/facial-landmarks-35-adas-0002.md">
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facial-landmarks-35-adas-0002</a>.
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The face detector takes the input image and returns a blob with the shape
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[1,1,200,7] after the inference (200 is the maximum number of
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faces which can be detected).
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In order to process every face individually, we need to convert this output to a
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list of regions on the image.
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The masks for different filters are built based on facial landmarks, which are
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inferred for every face. The result of the inference
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is a blob with 35 landmarks: the first 18 of them are facial elements
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(eyes, eyebrows, a nose, a mouth) and the last 17 --- a jaw contour. Landmarks
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are floating point values of coordinates normalized relatively to an input ROI
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(not the original frame). In addition, for the further goals we need contours of
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eyes, mouths, faces, etc., not the landmarks. So, post-processing of the Mat is
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also required here. The process is split into two parts --- landmarks'
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coordinates denormalization to the real pixel coordinates of the source frame
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and getting necessary closed contours based on these coordinates.
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The last step of processing the inference data is drawing masks using the
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calculated contours. In this demo the contours don't need to be pixel accurate,
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since masks are blurred with Gaussian filter anyway. Another point that should
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be mentioned here is getting
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three masks (for areas to be smoothed, for ones to be sharpened and for the
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background) which have no intersections with each other; this approach allows to
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apply the calculated masks to the corresponding images prepared beforehand and
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then just to summarize them to get the output image without any other actions.
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As we can see, this algorithm is appropriate to illustrate G-API usage
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convenience and efficiency in the context of solving a real CV/DL problem.
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(On detector post-proc)
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Some points to be mentioned about this kernel implementation:
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- It takes a `cv::Mat` from the detector and a `cv::Mat` from the input; it
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returns an array of ROI's where faces have been detected.
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- `cv::Mat` data parsing by the pointer on a float is used here.
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- By far the most important thing here is solving an issue that sometimes
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detector returns coordinates located outside of the image; if we pass such an
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ROI to be processed, errors in the landmarks detection will occur. The frame box
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`borders` is created and then intersected with the face rectangle
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(by `operator&()`) to handle such cases and save the ROI which is for sure
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inside the frame.
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Data parsing after the facial landmarks detector happens according to the same
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scheme with inconsiderable adjustments.
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## Possible further improvements
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There are some points in the algorithm to be improved.
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### Correct ROI reshaping for meeting conditions required by the facial landmarks detector
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The input of the facial landmarks detector is a square ROI, but the face
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detector gives non-square rectangles in general. If we let the backend within
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Inference-API compress the rectangle to a square by itself, the lack of
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inference accuracy can be noticed in some cases.
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There is a solution: we can give a describing square ROI instead of the
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rectangular one to the landmarks detector, so there will be no need to compress
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the ROI, which will lead to accuracy improvement.
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Unfortunately, another problem occurs if we do that:
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if the rectangular ROI is near the border, a describing square will probably go
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out of the frame --- that leads to errors of the landmarks detector.
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To avoid such a mistake, we have to implement an algorithm that, firstly,
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describes every rectangle by a square, then counts the farthest coordinates
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turned up to be outside of the frame and, finally, pads the source image by
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borders (e.g. single-colored) with the size counted. It will be safe to take
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square ROIs for the facial landmarks detector after that frame adjustment.
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### Research for the best parameters (used in GaussianBlur() or unsharpMask(), etc.)
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### Parameters autoscaling
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-->
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