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Papers/Detecting Faces Using Region-based Fully Convolutional Net...

Detecting Faces Using Region-based Fully Convolutional Networks

Yitong Wang, Xing Ji, Zheng Zhou, Hao Wang, Zhifeng Li

2017-09-14Face Detection
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Abstract

Face detection has achieved great success using the region-based methods. In this report, we propose a region-based face detector applying deep networks in a fully convolutional fashion, named Face R-FCN. Based on Region-based Fully Convolutional Networks (R-FCN), our face detector is more accurate and computational efficient compared with the previous R-CNN based face detectors. In our approach, we adopt the fully convolutional Residual Network (ResNet) as the backbone network. Particularly, We exploit several new techniques including position-sensitive average pooling, multi-scale training and testing and on-line hard example mining strategy to improve the detection accuracy. Over two most popular and challenging face detection benchmarks, FDDB and WIDER FACE, Face R-FCN achieves superior performance over state-of-the-arts.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingWIDER Face (Medium)AP0.931Face R-FCN
Facial Recognition and ModellingWIDER Face (Easy)AP0.943Face R-FCN
Facial Recognition and ModellingFDDBAP0.99Face R-FCN
Facial Recognition and ModellingWIDER Face (Hard)AP0.876Face R-FCN
Face DetectionWIDER Face (Medium)AP0.931Face R-FCN
Face DetectionWIDER Face (Easy)AP0.943Face R-FCN
Face DetectionFDDBAP0.99Face R-FCN
Face DetectionWIDER Face (Hard)AP0.876Face R-FCN
Face ReconstructionWIDER Face (Medium)AP0.931Face R-FCN
Face ReconstructionWIDER Face (Easy)AP0.943Face R-FCN
Face ReconstructionFDDBAP0.99Face R-FCN
Face ReconstructionWIDER Face (Hard)AP0.876Face R-FCN
3DWIDER Face (Medium)AP0.931Face R-FCN
3DWIDER Face (Easy)AP0.943Face R-FCN
3DFDDBAP0.99Face R-FCN
3DWIDER Face (Hard)AP0.876Face R-FCN
3D Face ModellingWIDER Face (Medium)AP0.931Face R-FCN
3D Face ModellingWIDER Face (Easy)AP0.943Face R-FCN
3D Face ModellingFDDBAP0.99Face R-FCN
3D Face ModellingWIDER Face (Hard)AP0.876Face R-FCN
3D Face ReconstructionWIDER Face (Medium)AP0.931Face R-FCN
3D Face ReconstructionWIDER Face (Easy)AP0.943Face R-FCN
3D Face ReconstructionFDDBAP0.99Face R-FCN
3D Face ReconstructionWIDER Face (Hard)AP0.876Face R-FCN

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