A Robust and Efficient Method for Effective Facial Keypoint Detection

Author:

Huang Yonghui1,Chen Yu1,Wang Junhao1,Zhou Pengcheng1,Lai Jiaming1,Wang Quanhai1

Affiliation:

1. College of Computer Science and Cyber Security, Chengdu University of Technology, Chengdu 610059, China

Abstract

Facial keypoint detection technology faces significant challenges under conditions such as occlusion, extreme angles, and other demanding environments. Previous research has largely relied on deep learning regression methods using the face’s overall global template. However, these methods lack robustness in difficult conditions, leading to instability in detecting facial keypoints. To address this challenge, we propose a joint optimization approach that combines regression with heatmaps, emphasizing the importance of local apparent features. Furthermore, to mitigate the reduced learning capacity resulting from model pruning, we integrate external supervision signals through knowledge distillation into our method. This strategy fosters the development of efficient, effective, and lightweight facial keypoint detection technology. Experimental results on the CelebA, 300W, and AFLW datasets demonstrate that our proposed method significantly improves the robustness of facial keypoint detection.

Publisher

MDPI AG

Reference53 articles.

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