Analysis of gender recognition methods' robustness

M. Peter, Mikhaylov Dmitry
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引用次数: 3

Abstract

A lot of studies are conducted in the area of gender recognition, new methods are constantly proposed for image alignment, feature extraction and classification. But the vast majority of the publications have a certain shortcoming: they only evaluate the methods' performance on a fixed set of images, often of a constant good quality, and pay little or no attention to how it would perform under different, more realistic conditions. The problem of methods robustness is of importance when defining areas of application for known methods and choosing a method to use in a particular situation. This paper aims to encourage more research attention to the problem of robustness and presents a study on several methods' performance in presence of some simple complicating factors such as alignment error or noise. The results show that the method demonstrating the best results on an initial image base proves to be more sensitive to input quality than others and thus loses the competition which proves the importance of such research.
性别识别方法的鲁棒性分析
在性别识别领域进行了大量的研究,不断提出新的图像对齐、特征提取和分类方法。但是绝大多数出版物都有一定的缺点:他们只评估方法在固定图像集上的性能,通常质量稳定,很少或根本不关注它在不同的、更现实的条件下的表现。在定义已知方法的应用领域和选择在特定情况下使用的方法时,方法的健壮性问题非常重要。本文旨在鼓励更多的研究关注鲁棒性问题,并提出了几种方法的性能,在一些简单的复杂因素,如对准误差或噪声存在。结果表明,在初始图像库上表现出最佳结果的方法对输入质量的敏感性高于其他方法,从而失去了竞争优势,证明了该研究的重要性。
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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