多角度人脸检测与逐步调整网络

Yuan Chen, Yang Xu, Wenjin Liu
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引用次数: 1

摘要

多角度人脸检测,在我们的生活中有着广泛的应用需求。然而,由于不同角度的人脸特征差异较大,给检测带来了一定的挑战。为了更有效地解决这一问题,我们提出了逐步调整网络(SAN),以粗到精的方式进行多角度人脸检测。该方法分为三个阶段,第一阶段是区分目标是人或猫的脸还是非脸。然后将每个候选目标的面部方向逐渐调整为直立。最初,边界框的位置需要分成几个步骤,并且只预测粗略的方向。我们的SAN可以实现逐渐减小旋转范围,并获得准确的全360度检测结果。旋转角度。在多方向FDDB和包含旋转人脸的更宽人脸子集(包括人类和猫的人脸)上的实验表明,我们的SAN可以取得良好的性能。
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Multi-angle Face Detection with Step-by-Step Adjustment Networks
Multi-angle face detection, has a wide range of application needs in our lives. However, due to the large difference in facial features at different angles, it brings certain challenges for detection. In order to solve this problem more efficiently, we propose Step-by-Step Adjustment Networks(SAN) to perform multi-angle face detection in a coarse-to-fine manner. The method contains three stages, the first stage is that distinguish the target is human or cat's face or non-face. Then each candidate target's face orientation will be adjust to upright gradually. Initially, the position of bounding box need to be divided by several steps, and only predicting coarse orientations. Our SAN can achieve gradually decreasing the rotate ranges, and obtain accurately detect consequence with full 360? rotate angles. The experiments on Multi-Oriented FDDB and a challenging subset of WIDER FACE containing rotated facial include human and cat's, the result show that our SAN can achieve good performance.
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