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Applying Manifold Learning Techniques to the CAESAR Database

机译:流形学习技术在CAESAR数据库中的应用

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Understanding and organizing data is the first step toward exploiting sensor phenomenology for dismount tracking. What image features are good for distinguishing people and what measurements, or combination of measurements, can be used to classify the dataset by demographics including gender, age, and race? A particular technique, Diffusion Maps, has demonstrated the potential to extract features that intuitively make sense [1]. We want to develop an understanding of this tool by validating existing results on the Civilian American and European Surface Anthropometry Resource (CAESAR) database. This database, provided by the Air Force Research Laboratory (AFRL) Human Effectiveness Directorate and SAE International, is a rich dataset which includes 40 traditional, anthropometric measurements of 4400 human subjects. If we could specifically measure the defining features for classification, from this database, then the future question will then be to determine a subset of these features that can be measured from imagery. This paper briefly describes the Diffusion Map technique, shows potential for dimension reduction of the CAESAR database, and describes interesting problems to be further explored.
机译:了解和组织数据是利用传感器现象学进行拆卸跟踪的第一步。哪些图像特征可以很好地区分人,哪些测量值或测量值组合可用于按性别,年龄和种族等人口统计数据对数据集进行分类?扩散地图是一种特殊的技术,它展示了提取直观上有意义的特征的潜力[1]。我们希望通过验证美利坚合众国和欧洲地表人体测量学资源(CAESAR)数据库中的现有结果来发展对该工具的理解。该数据库由空军研究实验室(AFRL)人类有效性总署和SAE International提供,是一个丰富的数据集,其中包括对4400位人类受试者进行的40种传统人体测量。如果我们可以从该数据库中专门测量分类的定义特征,那么未来的问题将是确定可以从影像测量的这些特征的子集。本文简要介绍了扩散图技术,展示了CAESAR数据库降维的潜力,并描述了有待进一步研究的有趣问题。

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