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A multi-scale cascade fully convolutional network face detector

机译:多尺度级联全卷积网络人脸检测器

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摘要

Face detection is challenging as faces in images could be present at arbitrary locations and in different scales. We propose a three-stage cascade structure based on fully convolutional neural networks (FCNs). It first proposes the approximate locations where the faces may be, then aims to find the accurate location by zooming on to the faces. Each level of the FCN cascade is a multi-scale fully-convolutional network, which generates scores at different locations and in different scales. A score map is generated after each FCN stage. Probable regions of face are selected and fed to the next stage. The number of proposals is decreased after each level, and the areas of regions are decreased to more precisely fit the face. Compared to passing proposals directly between stages, passing probable regions can decrease the number of proposals and reduce the cases where first stage doesn't propose good bounding boxes. We show that by using FCN and score map, the FCN cascade face detector can achieve strong performance on public datasets.
机译:人脸检测具有挑战性,因为图像中的人脸可以在任意位置以不同比例出现。我们提出了基于完全卷积神经网络(FCN)的三阶段级联结构。它首先提出可能存在面部的大概位置,然后旨在通过放大面部来找到准确的位置。 FCN级联的每个级别都是一个多尺度的全卷积网络,该网络会在不同的位置和不同的尺度上生成分数。在每个FCN阶段之后都会生成一个得分图。选择可能的脸部区域,并将其送入下一个阶段。提案的数量在每个级别之后都会减少,并且区域的面积也会减少以更精确地适合面部。与在阶段之间直接通过提案相比,通过可能区域可以减少提案数量,并减少第一阶段没有提出好的边界框的情况。我们表明,通过使用FCN和分数图,FCN级联脸部检测器可以在公共数据集上实现强大的性能。

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