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Enhancing Interior and Exterior Deep Facial Features for Face Detection in the Wild

机译:增强内部和外部深部面部特征以在野外进行面部检测

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Although face detection has been intensely studied for decades, it is still a challenging topic due to numerous conditions, e.g. heavy occlusions, low resolutions, extreme poses, non-face patterns that look like human faces, etc. This paper proposes a novel region-based ConvNet to address these issues. Our approach enhances the interior deep facial features and explicitly incorporates the exterior deep features. The enhanced interior features provide fine details for small faces. The exterior features capture the local information surrounding the face, supporting the detection under challenging conditions. Experiments show that our proposed components improve the baseline method significantly. Additionally, our approach consistently achieves competitive performance in four challenging databases, i.e. Wider Face, AFW, PASCAL Faces, and FDDB. We also introduce a new challenging non-face dataset 1 of 6,000 images to benchmark false positive rates for future research.
机译:尽管已经对面部检测进行了数十年的深入研究,但是由于多种条件,例如面部护理,它仍然是具有挑战性的主题。重度遮挡,低分辨率,极端姿势,看起来像人脸的非脸部图案等。本文提出了一种基于区域的新型ConvNet,以解决这些问题。我们的方法增强了内部深层面部特征,并明确地融合了外部深层特征。增强的内部特征可为小脸提供精美的细节。外部特征捕获面部周围的局部信息,从而支持在严峻条件下的检测。实验表明,我们提出的组件可以显着改善基线方法。此外,我们的方法在四个更具挑战性的数据库(即Wided Face,AFW,PASCAL Faces和FDDB)中始终保持竞争优势。我们还引入了一个新的具有挑战性的6,000张图像的非面部数据集1,以基准误报率作为以后研究的基准。

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