STAR Loss: Reducing Semantic Ambiguity in Facial Landmark Detection

Zhengwei Zhou, Huaxia Li, Hong Liu, Na-na Wang, Gang Yu, R. Ji
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引用次数: 5

Abstract

Recently, deep learning-based facial landmark detection has achieved significant improvement. However, the semantic ambiguity problem degrades detection performance. Specifically, the semantic ambiguity causes inconsistent annotation and negatively affects the model's convergence, leading to worse accuracy and instability prediction. To solve this problem, we propose a Self-adapTive Ambiguity Reduction (STAR) loss by exploiting the properties of se-mantic ambiguity. We find that semantic ambiguity results in the anisotropic predicted distribution, which inspires us to use predicted distribution to represent semantic ambiguity. Based on this, we design the STAR loss that measures the anisotropism of the predicted distribution. Compared with the standard regression loss, STAR loss is encouraged to be small when the predicted distribution is anisotropic and thus adaptively mitigates the impact of semantic ambiguity. Moreover, we propose two kinds of eigen-value restriction methods that could avoid both distribution's abnormal change and the model's premature convergence. Finally, the comprehensive experiments demonstrate that STAR loss outperforms the state-of-the-art methods on three benchmarks, i.e., COFW, 300W, and WFLW, with negligible computation overhead. Code is at https://github.com/ZhenglinZhou/STAR
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STAR损失:减少面部地标检测中的语义歧义
近年来,基于深度学习的人脸特征检测已经取得了显著的进步。然而,语义模糊问题降低了检测性能。具体来说,语义模糊导致标注不一致,对模型的收敛性产生负面影响,导致预测精度降低,预测不稳定。为了解决这个问题,我们提出了一种利用语义歧义特性的自适应歧义减少(STAR)损失方法。我们发现语义歧义会导致预测分布的各向异性,这启发我们用预测分布来表示语义歧义。在此基础上,我们设计了测量预测分布各向异性的STAR损耗。与标准回归损失相比,当预测分布是各向异性时,STAR损失被鼓励较小,从而自适应地减轻语义歧义的影响。此外,我们还提出了两种既能避免分布异常变化又能避免模型过早收敛的特征值约束方法。最后,综合实验表明,在COFW、300W和WFLW三个基准上,STAR损耗优于最先进的方法,计算开销可以忽略不计。代码在https://github.com/ZhenglinZhou/STAR
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