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Gender Classification from Video under Challenging Operating Conditions

机译:挑战性工作条件下的视频性别分类

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The literature is abundant with papers on gender classification research. However the majority of such research is based on the assumption that there is enough resolution so that the subject's face can be resolved. Hence the majority of the research is actually in the face recognition and facial feature area. A gap exists for gender classification under challenging operating conditions-different seasonal conditions, different clothing, etc.-and when the subject's face cannot be resolved due to lack of resolution. The Seasonal Weather and Gender (SWAG) Database is a novel database that contains subjects walking through a scene under operating conditions that span a calendar year. This paper exploits a subset of that database-the SWAG One dataset-using data mining techniques, traditional classifiers (ex. Naive Bayes, Support Vector Machine, etc.) and traditional (canny edge detection, etc.) and non-traditional (height/width ratios, etc.) feature extractors to achieve high correct gender classification rates (greater than 85%). Another novelty includes exploiting frame differentials.
机译:有关性别分类研究的文献很多。但是,大多数此类研究都是基于这样的假设,即有足够的分辨率以解决对象的脸部问题。因此,大部分研究实际上是在面部识别和面部特征领域。在具有挑战性的操作条件(不同的季节条件,不同的衣服等)下以及由于缺乏分辨力​​而无法解决对象的面部时,性别分类存在差距。季节性天气和性别(SWAG)数据库是一个新颖的数据库,其中包含在跨历年的工作条件下在场景中行走的对象。本文利用该数据库的子集-SWAG One数据集-使用数据挖掘技术,传统分类器(例如,朴素贝叶斯,支持向量机等)以及传统(分类器边缘检测等)和非传统(高度) /宽度比率等)功能,以实现较高的正确性别分类率(大于85%)。另一个新颖之处包括利用帧差异。

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