HAMBox: Delving Into Mining High-Quality Anchors on Face Detection

Yang Liu, Xu Tang, Junyu Han, Jingtuo Liu, Dinger Rui, Xiang Wu
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引用次数: 35

Abstract

Current face detectors utilize anchors to frame a multi-task learning problem which combines classification and bounding box regression. Effective anchor design and anchor matching strategy enable face detectors to localize faces under large pose and scale variations. However, we observe that, more than 80% correctly predicted bounding boxes are regressed from the unmatched anchors (the IoUs between anchors and target faces are lower than a threshold) in the inference phase. It indicates that these unmatched anchors perform excellent regression ability, but the existing methods neglect to learn from them. In this paper, we propose an Online High-quality Anchor Mining Strategy (HAMBox), which explicitly helps outer faces compensate with high-quality anchors. Our proposed HAMBox method could be a general strategy for anchor-based single-stage face detection. Experiments on various datasets, including WIDER FACE, FDDB, AFW and PASCAL Face, demonstrate the superiority of the proposed method.
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HAMBox:基于人脸检测的高质量锚点挖掘
目前的人脸检测器利用锚点来构建一个结合分类和边界盒回归的多任务学习问题。有效的锚点设计和锚点匹配策略使人脸检测器能够在大姿态和大尺度变化下对人脸进行定位。然而,我们观察到,在推理阶段,超过80%的正确预测的边界框是从不匹配的锚点(锚点和目标面之间的白条低于阈值)回归的。这说明这些不匹配锚点具有很好的回归能力,但现有方法忽略了对它们的学习。在本文中,我们提出了一种在线高质量锚点挖掘策略(HAMBox),该策略明确地帮助外表面补偿高质量锚点。我们提出的HAMBox方法可以作为基于锚点的单阶段人脸检测的通用策略。在wide FACE、FDDB、AFW和PASCAL FACE等数据集上的实验证明了该方法的优越性。
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