Face detection speed improvement using bitmap-based Histogram of Oriented gradien

A. Dehghani, D. Moloney, Xiaofang Xu
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引用次数: 2

Abstract

Since the Viola-Jones seminal work, the boosted cascade with simple features has become the most popular and effective approach for practical face detection. More improved face detectors that can handle uncontrolled face detection scenarios have achieved by applying more advanced features such as Histogram of oriented Gradients (HoG). The great improvement in accuracy delivered by these methods has been accompanied by a large increase in the computational burden, which limited adoption in embedded solutions particularly. The improved bitmap-based HoG approaches resolved this problem by limitation of HoG window to non-rectangular irregular pattern of the object and its boundary avoid processing of extra background and (partially) foreground pixels respectively. In this paper, bHoG and bbHoG along with three different bitmap patterns are applied to the face detection problem to not only benefits from the robustness of HoG, but also to amend its high computational cost significantly. Experimental results show an decrease of 92.5% in the workload associated with HoG/SVM classifiers compared to the state-of-the-art, along with approximately the same performance as standard HoG and an average decrease about 5% in recall and precision in comparison for the smaller cell sizes.
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基于位图的定向梯度直方图提高人脸检测速度
自Viola-Jones的开创性工作以来,具有简单特征的增强级联已成为实际人脸检测中最流行和最有效的方法。通过应用诸如定向梯度直方图(HoG)等更高级的特征,可以处理不受控制的人脸检测场景的改进的人脸检测器已经实现。这些方法在准确性方面的巨大改进伴随着计算负担的大量增加,这尤其限制了嵌入式解决方案的采用。改进的位图HoG方法通过将HoG窗口限制在物体的非矩形不规则图案及其边界上,避免了对额外的背景像素和(部分)前景像素的处理,解决了这一问题。本文将bHoG和bbHoG以及三种不同的位图模式应用于人脸检测问题,不仅受益于HoG的鲁棒性,而且显著改善了HoG的高计算成本。实验结果表明,与最先进的HoG/SVM分类器相比,HoG/SVM分类器的工作量减少了92.5%,并且与标准HoG的性能大致相同,与较小的单元尺寸相比,召回率和精度平均降低了约5%。
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