In recent year, tremendous strides have been made in face detection thanks to deep learning. However, most published face detectors deteriorate dramatically as the faces become smaller. In this paper, we present the Small Faces Attention (SFA) face detector to better detect faces with small scale. First, we propose a new scale-invariant face detection architecture which pays more attention to small faces, including 4-branch detection architecture and small faces sensitive anchor design. Second, feature maps fusion strategy is applied in SFA by partially combining high-level features into low-level features to further improve the ability of finding hard faces. Third, we use multi-scale training and testing strategy to enhance face detection performance in practice. Comprehensive experiments show that SFA significantly improves face detection performance, especially on small faces. Our real-time SFA face detector can run at 5 FPS on a single GPU as well as maintain high performance. Besides, our final SFA face detector achieves state-of-the-art detection performance on challenging face detection benchmarks, including WIDER FACE and FDDB datasets, with competitive runtime speed. Both our code and models will be available to the research community.
翻译:近年,由于深层学习,在面对面检测方面取得了长足的进步,然而,大多数公开的面对面检测器随着面孔变小而急剧恶化。在本文件中,我们展示了小型脸孔识别器(SFA),以更好地检测面孔。首先,我们提出了一个新的规模变化式面孔检测结构,更多地关注小脸孔,包括4个部门检测架构和面孔敏感定位设计。第二,在SFA中应用特写地图聚合战略,将高层次特征部分结合到低层次特征中,以进一步提高寻找难面孔的能力。第三,我们利用多层次培训和测试战略,提高面对面检测的操作性能。全面实验表明SFA显著改进了面孔检测性能,特别是在小脸孔上。我们实时SFA脸检测器在5个FPS上运行,并保持高性能。此外,我们最后的SFA图像检测器在具有挑战性的脸部检测基准方面达到最先进的检测性能,包括WIDER FACE和FDB数据集,具有竞争性的运行速度。我们的代码和模型将提供给社区研究。