霍夫森林参数对人脸检测性能影响的实证分析

M. Hassaballah, Mourad Ahmed, H. Alshazly
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摘要

人脸检测作为计算机视觉中最具挑战性的任务之一,由于其在基于人脸的图像分析中的广泛应用,近几十年来受到了广泛的关注。本文提出了一种在随机决策森林框架下有效结合广义霍夫变换的人脸检测方法。在这种方法中,我们训练随机决策森林,将图像斑块的外观直接映射到关于人脸质心可能位置的概率投票;然后检测假设对应于霍夫图像的最大值。随机决策森林的构建和预测能力取决于一些参数的设置,而这些参数的设置又会影响方法的性能。因此,通过在广泛使用的CMU+MIT数据库上进行实验,研究这些对森林人脸检测行为影响最大的参数的影响。并与一些已发表的方法进行了比较。
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Effect of hough forests parameters on face detection performance: An empirical analysis
Face detection as one of the most challenging tasks in computer vision has received a lot of attention in recent decades due to its wide range of use in face based image analysis. In this paper, we propose an efficient approach for face detection that efficiently combines generalized Hough transform within random decision forests framework. In this approach, we train random decision forests that directly maps the image patch appearance to the probabilistic vote about the possible location of the face centroid; the detection hypotheses then correspond to the maxima of the Hough image. The random decision forests construction and prediction abilities depend on setting some parameters, which in turns affects the performance of the method. Therefore, the impact of these parameters that most influence the behavior of the forest for detecting faces is studied through experiments on the widely used CMU+MIT database. Moreover, a comparison with some published methods is presented.
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