Learning Facial Action Units from Web Images with Scalable Weakly Supervised Clustering.

Kaili Zhao, Wen-Sheng Chu, Aleix M Martinez
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Abstract

We present a scalable weakly supervised clustering approach to learn facial action units (AUs) from large, freely available web images. Unlike most existing methods (e.g., CNNs) that rely on fully annotated data, our method exploits web images with inaccurate annotations. Specifically, we derive a weakly-supervised spectral algorithm that learns an embedding space to couple image appearance and semantics. The algorithm has efficient gradient update, and scales up to large quantities of images with a stochastic extension. With the learned embedding space, we adopt rank-order clustering to identify groups of visually and semantically similar images, and re-annotate these groups for training AU classifiers. Evaluation on the 1 millon EmotioNet dataset demonstrates the effectiveness of our approach: (1) our learned annotations reach on average 91.3% agreement with human annotations on 7 common AUs, (2) classifiers trained with re-annotated images perform comparably to, sometimes even better than, its supervised CNN-based counterpart, and (3) our method offers intuitive outlier/noise pruning instead of forcing one annotation to every image. Code is available.

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使用可扩展的弱监督聚类从网络图像中学习面部动作单元。
我们提出了一种可扩展的弱监督聚类方法,从大的、免费的网络图像中学习面部动作单元(AU)。与大多数依赖于完全注释数据的现有方法(例如,CNN)不同,我们的方法利用了注释不准确的网络图像。具体来说,我们推导了一种弱监督谱算法,该算法学习嵌入空间来耦合图像外观和语义。该算法具有高效的梯度更新,并以随机扩展的方式扩展到大量图像。利用学习的嵌入空间,我们采用秩序聚类来识别视觉和语义相似的图像组,并对这些组进行重新注释以训练AU分类器。对1 millon EmotioNet数据集的评估证明了我们方法的有效性:(1)我们学习的注释在7个常见AU上与人类注释的一致性平均达到91.3%;(2)用重新注释的图像训练的分类器的性能与基于CNN的监督分类器相当,有时甚至更好,以及(3)我们的方法提供了直观的异常值/噪声修剪,而不是强制对每个图像进行一个注释。代码可用。
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