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A hierarchical learning network for face detection with in-plane rotation

机译:平面内旋转的人脸检测的分层学习网络

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摘要

This paper presents a scale and rotation invariant face detection system. The system employs a hierarchical neural network, called SICoNNet, whose processing elements are governed by the nonlinear mechanism of shunting inhibition. The neural network is used as a faceonface classifier that can handle in-plane rotated patterns. To train the network as a rotation invariant face classifier, an enhanced bootstrap training technique is developed, which prevents bias towards the nonface class. Furthermore, a multiresolution processing is employed for scale invariance: an image pyramid is formed through sub-sampling and face detection is performed at each scale of the pyramid using an adaptive threshold. Evaluated on the benchmark CMU rotated face database, the proposed face detection system outperforms some of the existing rotation invariant face detectors; it has fewer false positives and higher detection accuracy.
机译:本文提出了一种尺度和旋转不变的人脸检测系统。该系统使用一个称为SICoNNet的分层神经网络,其处理元素受分流抑制的非线性机制支配。神经网络用作可以处理平面内旋转模式的人脸/非人脸分类器。为了将网络训练为旋转不变的面部分类器,开发了一种增强的自举训练技术,该技术可防止偏向非面部类别。此外,对尺度不变性采用了多分辨率处理:通过子采样形成图像金字塔,并使用自适应阈值在金字塔的每个尺度上执行人脸检测。在基准CMU旋转人脸数据库上进行评估后,所提出的人脸检测系统优于某些现有的旋转不变人脸检测器。它具有更少的误报和更高的检测精度。

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