KPNet: Towards Minimal Face Detector


  • Guanglu Song SenseTime X-Lab
  • Yu Liu The Chinese University of Hong Kong
  • Yuhang Zang SenseTime X-Lab
  • Xiaogang Wang The Chinese University of Hong Kong
  • Biao Leng Beihang University
  • Qingsheng Yuan National Computer network Emergency Response technical Team/Coordination Center of China



The small receptive field and capacity of minimal neural networks limit their performance when using them to be the backbone of detectors. In this work, we find that the appearance feature of a generic face is discriminative enough for a tiny and shallow neural network to verify from the background. And the essential barriers behind us are 1) the vague definition of the face bounding box and 2) tricky design of anchor-boxes or receptive field. Unlike most top-down methods for joint face detection and alignment, the proposed KPNet detects small facial keypoints instead of the whole face by in the bottom-up manner. It first predicts the facial landmarks from a low-resolution image via the well-designed fine-grained scale approximation and scale adaptive soft-argmax operator. Finally, the precise face bounding boxes, no matter how we define it, can be inferred from the keypoints. Without any complex head architecture or meticulous network designing, the KPNet achieves state-of-the-art accuracy on generic face detection and alignment benchmarks with only ∼ 1M parameters, which runs at 1000fps on GPU and is easy to perform real-time on most modern front-end chips.




How to Cite

Song, G., Liu, Y., Zang, Y., Wang, X., Leng, B., & Yuan, Q. (2020). KPNet: Towards Minimal Face Detector. Proceedings of the AAAI Conference on Artificial Intelligence, 34(07), 12015-12022.



AAAI Technical Track: Vision