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181 lines
6.0 KiB
181 lines
6.0 KiB
10 years ago
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Operations with images {#tutorial_ug_mat}
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======================
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Input/Output
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------------
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### Images
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Load an image from a file:
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@code{.cpp}
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Mat img = imread(filename)
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@endcode
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If you read a jpg file, a 3 channel image is created by default. If you need a grayscale image, use:
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@code{.cpp}
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Mat img = imread(filename, 0);
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@endcode
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@note format of the file is determined by its content (first few bytes) Save an image to a file:
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@code{.cpp}
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imwrite(filename, img);
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@endcode
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@note format of the file is determined by its extension.
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@note use imdecode and imencode to read and write image from/to memory rather than a file.
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XML/YAML
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--------
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TBD
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Basic operations with images
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----------------------------
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### Accessing pixel intensity values
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In order to get pixel intensity value, you have to know the type of an image and the number of
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channels. Here is an example for a single channel grey scale image (type 8UC1) and pixel coordinates
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x and y:
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@code{.cpp}
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Scalar intensity = img.at<uchar>(y, x);
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@endcode
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intensity.val[0] contains a value from 0 to 255. Note the ordering of x and y. Since in OpenCV
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images are represented by the same structure as matrices, we use the same convention for both
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cases - the 0-based row index (or y-coordinate) goes first and the 0-based column index (or
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x-coordinate) follows it. Alternatively, you can use the following notation:
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@code{.cpp}
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Scalar intensity = img.at<uchar>(Point(x, y));
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@endcode
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Now let us consider a 3 channel image with BGR color ordering (the default format returned by
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imread):
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@code{.cpp}
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Vec3b intensity = img.at<Vec3b>(y, x);
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uchar blue = intensity.val[0];
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uchar green = intensity.val[1];
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uchar red = intensity.val[2];
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@endcode
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You can use the same method for floating-point images (for example, you can get such an image by
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running Sobel on a 3 channel image):
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@code{.cpp}
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Vec3f intensity = img.at<Vec3f>(y, x);
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float blue = intensity.val[0];
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float green = intensity.val[1];
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float red = intensity.val[2];
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@endcode
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The same method can be used to change pixel intensities:
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@code{.cpp}
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img.at<uchar>(y, x) = 128;
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@endcode
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There are functions in OpenCV, especially from calib3d module, such as projectPoints, that take an
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array of 2D or 3D points in the form of Mat. Matrix should contain exactly one column, each row
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corresponds to a point, matrix type should be 32FC2 or 32FC3 correspondingly. Such a matrix can be
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easily constructed from `std::vector`:
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@code{.cpp}
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vector<Point2f> points;
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//... fill the array
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Mat pointsMat = Mat(points);
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@endcode
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One can access a point in this matrix using the same method Mat::at :
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@code{.cpp}
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Point2f point = pointsMat.at<Point2f>(i, 0);
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@endcode
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### Memory management and reference counting
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Mat is a structure that keeps matrix/image characteristics (rows and columns number, data type etc)
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and a pointer to data. So nothing prevents us from having several instances of Mat corresponding to
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the same data. A Mat keeps a reference count that tells if data has to be deallocated when a
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particular instance of Mat is destroyed. Here is an example of creating two matrices without copying
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data:
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@code{.cpp}
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std::vector<Point3f> points;
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// .. fill the array
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Mat pointsMat = Mat(points).reshape(1);
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@endcode
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As a result we get a 32FC1 matrix with 3 columns instead of 32FC3 matrix with 1 column. pointsMat
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uses data from points and will not deallocate the memory when destroyed. In this particular
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instance, however, developer has to make sure that lifetime of points is longer than of pointsMat.
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If we need to copy the data, this is done using, for example, cv::Mat::copyTo or cv::Mat::clone:
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@code{.cpp}
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Mat img = imread("image.jpg");
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Mat img1 = img.clone();
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@endcode
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To the contrary with C API where an output image had to be created by developer, an empty output Mat
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can be supplied to each function. Each implementation calls Mat::create for a destination matrix.
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This method allocates data for a matrix if it is empty. If it is not empty and has the correct size
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and type, the method does nothing. If, however, size or type are different from input arguments, the
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data is deallocated (and lost) and a new data is allocated. For example:
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@code{.cpp}
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Mat img = imread("image.jpg");
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Mat sobelx;
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Sobel(img, sobelx, CV_32F, 1, 0);
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@endcode
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### Primitive operations
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There is a number of convenient operators defined on a matrix. For example, here is how we can make
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a black image from an existing greyscale image \`img\`:
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@code{.cpp}
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img = Scalar(0);
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@endcode
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Selecting a region of interest:
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@code{.cpp}
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Rect r(10, 10, 100, 100);
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Mat smallImg = img(r);
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@endcode
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A convertion from Mat to C API data structures:
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@code{.cpp}
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Mat img = imread("image.jpg");
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IplImage img1 = img;
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CvMat m = img;
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@endcode
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Note that there is no data copying here.
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Conversion from color to grey scale:
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@code{.cpp}
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Mat img = imread("image.jpg"); // loading a 8UC3 image
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Mat grey;
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cvtColor(img, grey, COLOR_BGR2GRAY);
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@endcode
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Change image type from 8UC1 to 32FC1:
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@code{.cpp}
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src.convertTo(dst, CV_32F);
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@endcode
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### Visualizing images
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It is very useful to see intermediate results of your algorithm during development process. OpenCV
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provides a convenient way of visualizing images. A 8U image can be shown using:
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@code{.cpp}
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Mat img = imread("image.jpg");
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namedWindow("image", WINDOW_AUTOSIZE);
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imshow("image", img);
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waitKey();
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@endcode
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A call to waitKey() starts a message passing cycle that waits for a key stroke in the "image"
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window. A 32F image needs to be converted to 8U type. For example:
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@code{.cpp}
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Mat img = imread("image.jpg");
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Mat grey;
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cvtColor(img, grey, COLOR_BGR2GRAY);
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Mat sobelx;
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Sobel(grey, sobelx, CV_32F, 1, 0);
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double minVal, maxVal;
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minMaxLoc(sobelx, &minVal, &maxVal); //find minimum and maximum intensities
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Mat draw;
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sobelx.convertTo(draw, CV_8U, 255.0/(maxVal - minVal), -minVal * 255.0/(maxVal - minVal));
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namedWindow("image", WINDOW_AUTOSIZE);
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imshow("image", draw);
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waitKey();
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@endcode
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