基于图像处理技术的性别分类研究综述

S. Khan, Muhammad Nazir, Sheeraz Akram, Naveed Riaz
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引用次数: 32

摘要

分类已经成为解决问题和优化问题的主要技术。分类在许多问题领域得到了广泛的应用。性别自动分类是一个具有重要意义和巨大潜力的研究领域。它在不久的将来提供了几个工业应用,如监控,监视,商业分析和人机交互。人们提出了不同的性别分类方法,如步态、虹膜和手形。然而,大多数性别分类技术都是基于面部信息的。本文对不同的性别分类方法进行了比较研究。这项工作的主要重点是对用于性别分类的不同技术进行批判性评价。比较评价突出了现有性别分类技术的主要优点和局限性。综观这些主要问题,我们的研究重点是总结文献,突出其优势和局限性。本研究还提出了性别分类领域未来研究的几个领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gender classification using image processing techniques: A survey
Classification has emerged as a leading technique for problem solution and optimization. Classification has been used extensively in several problems domains. Automated gender classification is an area of great significance and has great potential for future research. It offers several industrial applications in near future such as monitoring, surveillance, commercial profiling and human computer interaction. Different methods have been proposed for gender classification like gait, iris and hand shape. However, majority of techniques for gender classification are based on facial information. In this paper, a comparative study of gender classification using different techniques is presented. The major emphasis of this work is on the critical evaluation of different techniques used for gender classification. The comparative evaluation has highlighted major strengths and limitations of existing gender classification techniques. Taking an overview of these major problems, our research is focused on summarizing the literature by highlighting its strengths and limitations. This study also presents several areas of future research in the domain of gender classification.
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