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Robust Object Detection using Fast Feature Selection from Huge Feature Sets

机译:强大的对象检测使用大功能集的快速特征选择

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This paper describes an efficient feature selection method that quickly selects a small subset out of a given huge feature set; for building robust object detection systems. In this filter-based method, features are selected not only to maximize their relevance with the target class but also to minimize their mutual dependency. As a result, the selected feature set contains only highly informative and non-redundant features, which significantly improve classification performance when combined. The relevance and mutual dependency of features are measured by using conditional mutual information (CMI) in which features and classes are treated as discrete random variables. Experiments on different huge feature sets have shown that the proposed CMI-based feature selection can both reduce the training time significantly and achieve high accuracy
机译:本文介绍了一种有效的特征选择方法,可快速选择给定的巨大功能集中的小子集; 用于构建强大的物体检测系统。 在基于过滤器的方法中,不仅选择特征,不仅可以最大化它们与目标类别的相关性,而且可以最小化它们的相互依赖性。 因此,所选功能集仅包含高度信息丰富和非冗余功能,这在组合时显着提高了分类性能。 通过使用条件互信息(CMI)来测量特征的相关性和相互依赖性,其中特征和类被视为离散随机变量。 不同巨大特征集的实验表明,所提出的基于CMI的特征选择可以显着降低训练时间并实现高精度

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