Efficient Gender Classification Using Interlaced Derivative Pattern and Principal Component Analysis

S. Khan, Muhammad Nazir, Usman Asghar, Naveed Riaz Ansari
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引用次数: 3

Abstract

With the wealth of image data that is now becoming increasingly accessible through the advent of the world wide web and proliferation of cheap, high quality digital cameras it is becoming ever more desirable to be able to automatically classify Gender into appropriate category such that intelligent agents and other such intelligent software might make better informed decisions regarding them without a need for excessive human intervention. In this paper, we present a new technique which provides superior performance superior than existing gender classification techniques. We first detect the face portion using Voila Jones face detector and then Interlaced Derivative Pattern (IDP)extract discriminative facial features for gender which are passed through Principal Component Analysis (PCA) to eliminate redundant features and thus reduce dimension. Keeping in mind strengths of different classifiers three classifiers K-nearest neighbor, Support Vector Machine and Fisher Discriminant Analysis are combined, which minimizes the classification error rate. We have used Stanford University Medical students (SUMS) face database for our experiment. Comparing our results and performance with existing techniques our proposed method provides high accuracy rate and robustness to illumination change.
基于交错导数模式和主成分分析的高效性别分类
随着万维网的出现和廉价、高质量的数码相机的普及,越来越多的人可以获得丰富的图像数据,能够自动将性别分类到适当的类别,这样智能代理和其他智能软件就可以在不需要过多人为干预的情况下做出更明智的决定,这变得越来越可取。在本文中,我们提出了一种新的性别分类技术,其性能优于现有的性别分类技术。我们首先使用Voila Jones人脸检测器检测人脸部分,然后利用IDP (inter隔行导数模式)提取性别判别性人脸特征,并通过主成分分析(PCA)去除冗余特征,从而实现降维。考虑到不同分类器的优势,将k近邻分类器、支持向量机分类器和Fisher判别分析分类器相结合,使分类错误率最小化。我们使用Stanford University Medical students (sum)的人脸数据库进行实验。结果表明,该方法具有较高的准确率和对光照变化的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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