Learning Robust Facial Landmark Detection via Hierarchical Structured Ensemble

Xu Zou, Sheng Zhong, Luxin Yan, Xiangyu Zhao, Jiahuan Zhou, Ying Wu
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引用次数: 46

Abstract

Heatmap regression-based models have significantly advanced the progress of facial landmark detection. However, the lack of structural constraints always generates inaccurate heatmaps resulting in poor landmark detection performance. While hierarchical structure modeling methods have been proposed to tackle this issue, they all heavily rely on manually designed tree structures. The designed hierarchical structure is likely to be completely corrupted due to the missing or inaccurate prediction of landmarks. To the best of our knowledge, in the context of deep learning, no work before has investigated how to automatically model proper structures for facial landmarks, by discovering their inherent relations. In this paper, we propose a novel Hierarchical Structured Landmark Ensemble (HSLE) model for learning robust facial landmark detection, by using it as the structural constraints. Different from existing approaches of manually designing structures, our proposed HSLE model is constructed automatically via discovering the most robust patterns so HSLE has the ability to robustly depict both local and holistic landmark structures simultaneously. Our proposed HSLE can be readily plugged into any existing facial landmark detection baselines for further performance improvement. Extensive experimental results demonstrate our approach significantly outperforms the baseline by a large margin to achieve a state-of-the-art performance.
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基于层次结构集成的鲁棒人脸特征检测
基于热图回归的模型极大地推动了人脸地标检测的进展。然而,缺乏结构约束总是产生不准确的热图,导致较差的地标检测性能。虽然已经提出了分层结构建模方法来解决这个问题,但它们都严重依赖于人工设计的树形结构。由于地标的缺失或不准确的预测,所设计的层次结构很可能被完全破坏。据我们所知,在深度学习的背景下,之前没有研究过如何通过发现面部标志的内在关系来自动为面部标志的适当结构建模。在本文中,我们提出了一种新的分层结构地标集成(HSLE)模型,将其作为学习鲁棒面部地标检测的结构约束。与现有的人工设计结构的方法不同,我们提出的HSLE模型是通过发现最鲁棒的模式来自动构建的,因此HSLE能够同时鲁棒地描述局部和整体地标结构。我们提出的HSLE可以很容易地插入任何现有的面部地标检测基线,以进一步提高性能。广泛的实验结果表明,我们的方法明显优于基线,以实现最先进的性能。
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