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Shifeng Zhang; Xiangyu Zhu; Zhen Lei; Hailin Shi; Xiaobo Wang; Stan Z. Li

Abstract
This paper presents a real-time face detector, named Single Shot Scale-invariant Face Detector (S$^3$FD), which performs superiorly on various scales of faces with a single deep neural network, especially for small faces. Specifically, we try to solve the common problem that anchor-based detectors deteriorate dramatically as the objects become smaller. We make contributions in the following three aspects: 1) proposing a scale-equitable face detection framework to handle different scales of faces well. We tile anchors on a wide range of layers to ensure that all scales of faces have enough features for detection. Besides, we design anchor scales based on the effective receptive field and a proposed equal proportion interval principle; 2) improving the recall rate of small faces by a scale compensation anchor matching strategy; 3) reducing the false positive rate of small faces via a max-out background label. As a consequence, our method achieves state-of-the-art detection performance on all the common face detection benchmarks, including the AFW, PASCAL face, FDDB and WIDER FACE datasets, and can run at 36 FPS on a Nvidia Titan X (Pascal) for VGA-resolution images.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| face-detection-on-fddb | S3FD | AP: 0.983 |
| face-detection-on-pascal-face | S3FD | AP: 0.9849 |
| face-detection-on-wider-face-easy | S3FD(F+S+M) | AP: 0.937 |
| face-detection-on-wider-face-hard | S3FD(F+S+M) | AP: 0.852 |
| face-detection-on-wider-face-medium | S3FD(F+S+M) | AP: 0.924 |
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