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Gender Classification Under Extended Operating Conditions

机译:扩展工作条件下的性别分类

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摘要

Gender classification is a critical component of a robust image security system. Many techniques exist to perform gender classification using facial features. In contrast, this paper explores gender classification using body features extracted from clothed subjects. Several of the most effective types of features for gender classification identified in literature were implemented and applied to the newly developed Seasonal Weather And Gender (SWAG) dataset. SWAG contains video clips of approximately 2000 samples of human subjects captured over a period of several months. The subjects are wearing casual business attire and outer garments appropriate for the specific weather conditions observed in the Midwest. The results from a series of experiments are presented that compare the classification accuracy of systems that incorporate various types and combinations of features applied to multiple looks at subjects at different image resolutions to determine a baseline performance for gender classification.
机译:性别分类是强大的图像安全系统的重要组成部分。存在许多使用面部特征执行性别分类的技术。相比之下,本文使用从穿着衣服的受试者中提取的身体特征来探索性别分类。文献中确定了几种最有效的性别分类特征类型,并将其应用于新开发的季节性天气与性别(SWAG)数据集。 SWAG包含在几个月内捕获的大约2000个人类对象样本的视频剪辑。受试者穿着适合中西部特定天气条件的休闲商务服装和外衣。提出了一系列实验的结果,这些结果比较了系统的分类准确性,该系统结合了以不同图像分辨率应用于多视角对象的多种类型和特征组合,以确定性别分类的基准性能。

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