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Papers/LFFD: A Light and Fast Face Detector for Edge Devices

LFFD: A Light and Fast Face Detector for Edge Devices

Yonghao He, Dezhong Xu, Lifang Wu, Meng Jian, Shiming Xiang, Chunhong Pan

2019-04-24Raspberry Pi 3Face Detection
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Abstract

Face detection, as a fundamental technology for various applications, is always deployed on edge devices which have limited memory storage and low computing power. This paper introduces a Light and Fast Face Detector (LFFD) for edge devices. The proposed method is anchor-free and belongs to the one-stage category. Specifically, we rethink the importance of receptive field (RF) and effective receptive field (ERF) in the background of face detection. Essentially, the RFs of neurons in a certain layer are distributed regularly in the input image and theses RFs are natural "anchors". Combining RF "anchors" and appropriate RF strides, the proposed method can detect a large range of continuous face scales with 100% coverage in theory. The insightful understanding of relations between ERF and face scales motivates an efficient backbone for one-stage detection. The backbone is characterized by eight detection branches and common layers, resulting in efficient computation. Comprehensive and extensive experiments on popular benchmarks: WIDER FACE and FDDB are conducted. A new evaluation schema is proposed for application-oriented scenarios. Under the new schema, the proposed method can achieve superior accuracy (WIDER FACE Val/Test -- Easy: 0.910/0.896, Medium: 0.881/0.865, Hard: 0.780/0.770; FDDB -- discontinuous: 0.973, continuous: 0.724). Multiple hardware platforms are introduced to evaluate the running efficiency. The proposed method can obtain fast inference speed (NVIDIA TITAN Xp: 131.45 FPS at 640x480; NVIDIA TX2: 136.99 PFS at 160x120; Raspberry Pi 3 Model B+: 8.44 FPS at 160x120) with model size of 9 MB.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingWIDER Face (Medium)AP0.865LFFD
Facial Recognition and ModellingWIDER Face (Easy)AP0.896LFFD
Facial Recognition and ModellingFDDBAP0.973LFFD
Facial Recognition and ModellingWIDER Face (Hard)AP0.77LFFD
Face DetectionWIDER Face (Medium)AP0.865LFFD
Face DetectionWIDER Face (Easy)AP0.896LFFD
Face DetectionFDDBAP0.973LFFD
Face DetectionWIDER Face (Hard)AP0.77LFFD
Face ReconstructionWIDER Face (Medium)AP0.865LFFD
Face ReconstructionWIDER Face (Easy)AP0.896LFFD
Face ReconstructionFDDBAP0.973LFFD
Face ReconstructionWIDER Face (Hard)AP0.77LFFD
3DWIDER Face (Medium)AP0.865LFFD
3DWIDER Face (Easy)AP0.896LFFD
3DFDDBAP0.973LFFD
3DWIDER Face (Hard)AP0.77LFFD
3D Face ModellingWIDER Face (Medium)AP0.865LFFD
3D Face ModellingWIDER Face (Easy)AP0.896LFFD
3D Face ModellingFDDBAP0.973LFFD
3D Face ModellingWIDER Face (Hard)AP0.77LFFD
3D Face ReconstructionWIDER Face (Medium)AP0.865LFFD
3D Face ReconstructionWIDER Face (Easy)AP0.896LFFD
3D Face ReconstructionFDDBAP0.973LFFD
3D Face ReconstructionWIDER Face (Hard)AP0.77LFFD

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