利用遗传算法优化模糊系统对彩色图像中的人脸进行检测

B. S. Mousavi, P. Moallem
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引用次数: 5

摘要

提出了一种彩色人脸检测方法。该系统由三个子系统组成:肤色分割子系统、唇色分割子系统和面部斑点选择子系统。所有这些算法都是基于模糊规则的算法,通过经验设计,再通过遗传算法进行优化。在第一阶段,在输入图像中选择肤色区域。在每个皮肤区域内,使用第二个子系统搜索唇像素,并将其作为特征用于识别皮肤区域内的候选人脸。利用唇的面积和相对于皮肤的位置,以及脸型信息,实现第三个子系统来选择面部斑点。为了准确地评估所提出的系统,报告了经验设计系统和优化系统的每个子系统的假阳性和假阴性。得到的结果表明,与经验设计的算法相比,优化算法的假阳性和假阴性显著减少。最后,该方法的检测率达到98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimized fuzzy system using genetic algorithm to detect faces in color images
A human face detection method for color images is presented in this paper. The system is composed of three subsystems: skin color segmentation, lip color segmentation and face blobs selection subsystem. Whole these algorithms are fuzzy rule base ones, which are designed empirically, and then optimized by genetic algorithm. In the first stage, skin color regions are selected in the input image. Within each of the skin area, lip pixels are searched using second subsystem, and applied as a feature to identify face candidates in the skin regions. Utilizing the lip area and position relative to the skin area, and face shape information, the third subsystem is materialized to choose face blobs. To precise evaluation of the proposed system, the false positive and false negative of each subsystem, are reported for the empirically designed system as well as the optimized system. Obtained results show a remarkable decrease in false positive and false negative for optimized algorithms compared to empirically designed ones. Finally, 98% detection rate is achieved using proposed method.
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