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Gender Recognition Based on Computer Vision System

机译:基于计算机视觉系统的性别识别

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摘要

Detecting human gender from complex background, illumination variations and objects under computer vision system is very difficult but important for an adaptive information service. In this paper, a preliminary design and some experimental results of gender recognition will be presented from the walking movement that utilizes the gait-energy image (GEI) with denoised energy image (DEI) pre-processing as a machine learning support vector machine (SVM) classifier to train and extract its characteristics. The results show that the proposed method can adopt some characteristic values and the accuracy can reach up to 100% gender recognition rate under combining the horizontal added vertical feature and using a normal image size and test data when people are walking at a fixed angle. Meanwhile, it will be able to achieve over 80% rate within some allowed fault-tolerant angle range.
机译:在计算机视觉系统下,从复杂的背景,照明变化和物体中检测出人类性别是非常困难的,但对于自适应信息服务而言却很重要。在本文中,将通过利用步态能量图像(GEI)和去噪能量图像(DEI)预处理作为机器学习支持向量机(SVM)的步行运动,提供性别识别的初步设计和一些实验结果。 )分类器来训练和提取其特征。结果表明,该方法在结合水平附加垂直特征,并以正常图像尺寸和人为角度行走时的测试数据的基础上,可以具有一定的特征值,性别识别率可达100%。同时,它将在某些允许的容错角度范围内达到80%以上的比率。

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