# DNN-based Face Detection And Recognition {#tutorial_dnn_face} @tableofcontents @prev_tutorial{tutorial_dnn_text_spotting} @next_tutorial{pytorch_cls_tutorial_dnn_conversion} | | | | -: | :- | | Original Author | Chengrui Wang, Yuantao Feng | | Compatibility | OpenCV >= 4.5.1 | ## Introduction In this section, we introduce the DNN-based module for face detection and face recognition. Models can be obtained in [Models](#Models). The usage of `FaceDetectorYN` and `FaceRecognizerSF` are presented in [Usage](#Usage). ## Models There are two models (ONNX format) pre-trained and required for this module: - [Face Detection](https://github.com/ShiqiYu/libfacedetection.train/tree/master/tasks/task1/onnx): - Size: 337KB - Results on WIDER Face Val set: 0.830(easy), 0.824(medium), 0.708(hard) - [Face Recognition](https://drive.google.com/file/d/1ClK9WiB492c5OZFKveF3XiHCejoOxINW/view?usp=sharing) - Size: 36.9MB - Results: | Database | Accuracy | Threshold (normL2) | Threshold (cosine) | | -------- | -------- | ------------------ | ------------------ | | LFW | 99.60% | 1.128 | 0.363 | | CALFW | 93.95% | 1.149 | 0.340 | | CPLFW | 91.05% | 1.204 | 0.275 | | AgeDB-30 | 94.90% | 1.202 | 0.277 | | CFP-FP | 94.80% | 1.253 | 0.212 | ## Usage ### DNNFaceDetector @add_toggle_cpp - **Downloadable code**: Click [here](https://github.com/opencv/opencv/tree/master/samples/dnn/face_detect.cpp) - **Code at glance:** @include samples/dnn/face_detect.cpp @end_toggle @add_toggle_python - **Downloadable code**: Click [here](https://github.com/opencv/opencv/tree/master/samples/dnn/face_detect.py) - **Code at glance:** @include samples/dnn/face_detect.py @end_toggle Explanation ----------- @add_toggle_cpp @snippet dnn/face_detect.cpp initialize_FaceDetectorYN @snippet dnn/face_detect.cpp inference @end_toggle @add_toggle_python @snippet dnn/face_detect.py initialize_FaceDetectorYN @snippet dnn/face_detect.py inference @end_toggle The detection output `faces` is a two-dimension array of type CV_32F, whose rows are the detected face instances, columns are the location of a face and 5 facial landmarks. The format of each row is as follows: ``` x1, y1, w, h, x_re, y_re, x_le, y_le, x_nt, y_nt, x_rcm, y_rcm, x_lcm, y_lcm ``` , where `x1, y1, w, h` are the top-left coordinates, width and height of the face bounding box, `{x, y}_{re, le, nt, rcm, lcm}` stands for the coordinates of right eye, left eye, nose tip, the right corner and left corner of the mouth respectively. ### Face Recognition Following Face Detection, run codes below to extract face feature from facial image. @add_toggle_cpp @snippet dnn/face_detect.cpp initialize_FaceRecognizerSF @snippet dnn/face_detect.cpp facerecognizer @end_toggle @add_toggle_python @snippet dnn/face_detect.py initialize_FaceRecognizerSF @snippet dnn/face_detect.py facerecognizer @end_toggle After obtaining face features *feature1* and *feature2* of two facial images, run codes below to calculate the identity discrepancy between the two faces. @add_toggle_cpp @snippet dnn/face_detect.cpp match @end_toggle @add_toggle_python @snippet dnn/face_detect.py match @end_toggle For example, two faces have same identity if the cosine distance is greater than or equal to 0.363, or the normL2 distance is less than or equal to 1.128. ## Reference: - https://github.com/ShiqiYu/libfacedetection - https://github.com/ShiqiYu/libfacedetection.train - https://github.com/zhongyy/SFace ## Acknowledgement Thanks [Professor Shiqi Yu](https://github.com/ShiqiYu/) and [Yuantao Feng](https://github.com/fengyuentau) for training and providing the face detection model. Thanks [Professor Deng](http://www.whdeng.cn/), [PhD Candidate Zhong](https://github.com/zhongyy/) and [Master Candidate Wang](https://github.com/crywang/) for training and providing the face recognition model.