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Receptive Field Is Natural Anchor
Receptive Field Is All You Need
2K real-time detection is so easy!
MobileFace
A face recognition solution on mobile device.
Prerequirements
- Anaconda (optional but recommend)
- MXNet and GluonCV (the easiest way to install)
- DLib (may be deprecated in the future)
The easiest way to install DLib is through pip.
pip install dlib
Performance
Identification
Model | Framework | Size | CPU | LFW | Target |
---|---|---|---|---|---|
MobileFace_Identification_V1 | MXNet | 3.40M | 8.5ms | - | Actual Scene |
MobileFace_Identification_V2 | MXNet | 3.41M | 9ms | 99.653% | Benchmark |
🌟MobileFace_Identification_V3 | MXNet | 2.10M | 💥3ms(sota) | 95.466%(baseline) | Benchmark |
Detection
Model | Framework | Size | CPU |
---|---|---|---|
MobileFace_Detection_V1 | MXNet/GluonCV | 30M | 20ms/50fps |
Landmark
Model | Framework | Size | CPU |
---|---|---|---|
MobileFace_Landmark_V1 | DLib | 5.7M | <1ms |
Pose
Model | Framework | Size | CPU |
---|---|---|---|
MobileFace_Pose_V1 | free | <1K | <0.1ms |
Align
Model | Framework | Size | CPU |
---|---|---|---|
MobileFace_Align_V1 | free | <1K | <0.1ms |
Attribute
Model | Framework | Size | CPU |
---|---|---|---|
MobileFace_Attribute_V1 | MXNet/GluonCV | 16.4M | 14ms/71fps |
Tracking
Model | Framework | Size | CPU |
---|---|---|---|
MobileFace_Tracking_V1 | free | - | <2ms |
Example
To get fast face feature embedding with MXNet as follow:
cd example
python get_face_feature_v1_mxnet.py # v1, v2, v3
To get fast face detection result with MXNet/GluonCV as follow:
cd example
python get_face_boxes_gluoncv.py
To get fast face landmarks result with dlib as follow:
cd example
python get_face_landmark_dlib.py
To get fast face pose result as follow:
cd example
python get_face_pose.py
To get fast face align result as follow:
cd example
python get_face_align.py
To get fast face attribute results as follow:
cd example
python get_face_attribute_gluoncv.py
To get mobileface all results as follow:
cd example
python mobileface_allinone.py
To get mobileface fast tracking result as follow:
cd example
python get_face_tracking_v1.py
To get mobileface makeup result as follow:
cd example
python get_face_makeup_v1.py
To get mobileface enhancement result as follow:
cd example
python get_face_enhancement_v1.py
Visualization
t-SNE
I used the t-SNE algorithm to visualize in two dimensions the 256-dimensional embedding space. Every color corresponds to a different person(but colors are reused): as you can see, the MobileFace has learned to group those pictures quite tightly. (the distances between clusters are meaningless when using the t-SNE algorithm)
To get the t-SNE feature visualization above as follow:
cd tool/tSNE
python face2feature.py # get features and lables and save them to txt
python tSNE_feature_visualization.py # load the txt to visualize face feature in 2D with tSNE
ConfusionMatrix
I used the ConfusionMatrix to visualize the 256-dimensional feature similarity heatmap of the LFW-Aligned-100Pair: as you can see, the MobileFace has learned to get higher similarity when calculating the same person's different two face photos. Although the performance of the V1 version is not particularly stunning on LFW Dataset, it does not mean that it does not apply to the actual scene.
To get the ConfusionMatrix feature similarity heatmap visualization above as follow:
cd tool/ConfusionMatrix
python ConfusionMatrix_similarity_visualization.py
Tool
Time
To get inference time of different version's MXNet models as follow:
cd tool/time
python inference_time_evaluation_mxnet.py --symbol_version=V3 # default = V1
Model_Prune
Prune the MXNet model through deleting the needless layers (such as classify layer and loss layer) and only retaining features layers to decrease the model size for inference as follow:
cd tool/prune
python model_prune_mxnet.py
MXNet2Caffe
Merge_bn
Benchmark
LFW
The LFW test dataset (aligned by MTCNN and cropped to 112x112) can be download from Dropbox or BaiduDrive, and then put it (named lfw.bin) in the directory of data/LFW-bin
.
To get the LFW comparison result and plot the ROC curves as follow:
cd benchmark/LFW
python lfw_comparison_and_plot_roc.py
MegaFace
TODO
- MobileFace_Identification
- MobileFace_Detection
- MobileFace_Landmark
- MobileFace_Align
- MobileFace_Attribute
- MobileFace_Pose
- MobileFace_Tracking
- MobileFace_Makeup
- MobileFace_Enhancement
- MobileFace_FacePortrait
- MobileFace_FaceSwap
- MobileFace_MakeupSwap
- MobileFace_NCNN
- MobileFace_FeatherCNN
- Benchmark_LFW
- Benchmark_MegaFace
Others
Coming Soon!