Open Source Computer Vision Library https://opencv.org/
You can not select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
 
 
 
 
 
 
berak fd16222613 dnn: update links for the colorization samples 3 years ago
..
face_detector Merge pull request #18591 from sl-sergei:download_utilities 4 years ago
.gitignore Merge pull request #18591 from sl-sergei:download_utilities 4 years ago
CMakeLists.txt Merge pull request #16150 from alalek:cmake_avoid_deprecated_link_private 5 years ago
README.md Merge pull request #18591 from sl-sergei:download_utilities 4 years ago
action_recognition.py
classification.cpp
classification.py
colorization.cpp dnn: update links for the colorization samples 3 years ago
colorization.py dnn: update links for the colorization samples 3 years ago
common.hpp
common.py
custom_layers.hpp
dasiamrpn_tracker.py Merge pull request #18033 from ieliz:dasiamrpn 4 years ago
download_models.py Merge pull request #18591 from sl-sergei:download_utilities 4 years ago
edge_detection.py
fast_neural_style.py fix pylint warnings 5 years ago
human_parsing.cpp dnn: add a human parsing cpp sample 5 years ago
human_parsing.py Merge pull request #16472 from l-bat:cp_vton 5 years ago
js_face_recognition.html Fix false positives of face detection network for large faces 5 years ago
mask_rcnn.py Merge pull request #17394 from huningxin:fix_segmentation_py 5 years ago
mobilenet_ssd_accuracy.py fix pylint warnings 5 years ago
models.yml Merge pull request #18591 from sl-sergei:download_utilities 4 years ago
object_detection.cpp Merge pull request #17332 from l-bat:fix_nms 5 years ago
object_detection.py Merge pull request #17332 from l-bat:fix_nms 5 years ago
openpose.cpp
openpose.py samples/dnn: better errormsg in openpose.py 4 years ago
optical_flow.py support flownet2 with arbitary input size 4 years ago
segmentation.cpp
segmentation.py Merge pull request #17394 from huningxin:fix_segmentation_py 5 years ago
shrink_tf_graph_weights.py
siamrpnpp.py fixes #18613 4 years ago
text_detection.cpp Add text recognition example 5 years ago
text_detection.py Merge pull request #16955 from themechanicalcoder:text_recognition 5 years ago
tf_text_graph_common.py Merge pull request #19417 from LupusSanctus:am/text_graph_identity 4 years ago
tf_text_graph_efficientdet.py dnn: EfficientDet 5 years ago
tf_text_graph_faster_rcnn.py
tf_text_graph_mask_rcnn.py
tf_text_graph_ssd.py Corrected SSD text graph generation 4 years ago
virtual_try_on.py Removed unused variables found by pylint. 4 years ago

README.md

OpenCV deep learning module samples

Model Zoo

Check a wiki for a list of tested models.

If OpenCV is built with Intel's Inference Engine support you can use Intel's pre-trained models.

There are different preprocessing parameters such mean subtraction or scale factors for different models. You may check the most popular models and their parameters at models.yml configuration file. It might be also used for aliasing samples parameters. In example,

python object_detection.py opencv_fd --model /path/to/caffemodel --config /path/to/prototxt

Check -h option to know which values are used by default:

python object_detection.py opencv_fd -h

Sample models

You can download sample models using download_models.py. For example, the following command will download network weights for OpenCV Face Detector model and store them in FaceDetector folder:

python download_models.py --save_dir FaceDetector opencv_fd

You can use default configuration files adopted for OpenCV from here.

You also can use the script to download necessary files from your code. Assume you have the following code inside your_script.py:

from download_models import downloadFile

filepath1 = downloadFile("https://drive.google.com/uc?export=download&id=0B3gersZ2cHIxRm5PMWRoTkdHdHc", None, filename="MobileNetSSD_deploy.caffemodel", save_dir="save_dir_1")
filepath2 = downloadFile("https://drive.google.com/uc?export=download&id=0B3gersZ2cHIxRm5PMWRoTkdHdHc", "994d30a8afaa9e754d17d2373b2d62a7dfbaaf7a", filename="MobileNetSSD_deploy.caffemodel")
print(filepath1)
print(filepath2)
# Your code

By running the following commands, you will get MobileNetSSD_deploy.caffemodel file:

export OPENCV_DOWNLOAD_DATA_PATH=download_folder
python your_script.py

Note that you can provide a directory using save_dir parameter or via OPENCV_SAVE_DIR environment variable.

Face detection

An origin model with single precision floating point weights has been quantized using TensorFlow framework. To achieve the best accuracy run the model on BGR images resized to 300x300 applying mean subtraction of values (104, 177, 123) for each blue, green and red channels correspondingly.

The following are accuracy metrics obtained using COCO object detection evaluation tool on FDDB dataset (see script) applying resize to 300x300 and keeping an origin images' sizes.

AP - Average Precision                            | FP32/FP16 | UINT8          | FP32/FP16 | UINT8          |
AR - Average Recall                               | 300x300   | 300x300        | any size  | any size       |
--------------------------------------------------|-----------|----------------|-----------|----------------|
AP @[ IoU=0.50:0.95 | area=   all | maxDets=100 ] | 0.408     | 0.408          | 0.378     | 0.328 (-0.050) |
AP @[ IoU=0.50      | area=   all | maxDets=100 ] | 0.849     | 0.849          | 0.797     | 0.790 (-0.007) |
AP @[ IoU=0.75      | area=   all | maxDets=100 ] | 0.251     | 0.251          | 0.208     | 0.140 (-0.068) |
AP @[ IoU=0.50:0.95 | area= small | maxDets=100 ] | 0.050     | 0.051 (+0.001) | 0.107     | 0.070 (-0.037) |
AP @[ IoU=0.50:0.95 | area=medium | maxDets=100 ] | 0.381     | 0.379 (-0.002) | 0.380     | 0.368 (-0.012) |
AP @[ IoU=0.50:0.95 | area= large | maxDets=100 ] | 0.455     | 0.455          | 0.412     | 0.337 (-0.075) |
AR @[ IoU=0.50:0.95 | area=   all | maxDets=  1 ] | 0.299     | 0.299          | 0.279     | 0.246 (-0.033) |
AR @[ IoU=0.50:0.95 | area=   all | maxDets= 10 ] | 0.482     | 0.482          | 0.476     | 0.436 (-0.040) |
AR @[ IoU=0.50:0.95 | area=   all | maxDets=100 ] | 0.496     | 0.496          | 0.491     | 0.451 (-0.040) |
AR @[ IoU=0.50:0.95 | area= small | maxDets=100 ] | 0.189     | 0.193 (+0.004) | 0.284     | 0.232 (-0.052) |
AR @[ IoU=0.50:0.95 | area=medium | maxDets=100 ] | 0.481     | 0.480 (-0.001) | 0.470     | 0.458 (-0.012) |
AR @[ IoU=0.50:0.95 | area= large | maxDets=100 ] | 0.528     | 0.528          | 0.520     | 0.462 (-0.058) |

References