Feature selection for object detection: The best group vs. the group of best

Luka Fürst, A. Leonardis
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引用次数: 0

Abstract

The problem of visual object detection, the goal of which is to predict the locations and sizes of all objects of a given visual category (e.g., cars) in a given set of images, is often based on a possibly large set of local features, only a few of which might actually be useful for the given detection setup. Feature selection is concerned with finding a `useful' subset of features. In this paper, we compare two approaches to feature selection in a visual object detection setup. One of them selects features based on their individual utility scores alone, regardless of possible interdependence with other features. The other approach employs the AdaBoost framework and hence implicitly deals with interdependence. Using two feature extraction methods and several image datasets, we experimentally confirm the significance of feature interdependence: features that perform well individually do not necessarily perform well as a group.
目标检测的特征选择:最佳组vs.最佳组
视觉对象检测问题的目标是预测给定图像集中给定视觉类别(例如,汽车)的所有对象的位置和大小,通常基于可能很大的局部特征集,其中只有少数可能对给定的检测设置有用。特征选择关注的是找到一个“有用的”特征子集。在本文中,我们比较了视觉目标检测设置中的两种特征选择方法。其中一种方法是根据各自的效用得分来选择功能,而不考虑与其他功能之间可能存在的相互依赖性。另一种方法采用AdaBoost框架,因此隐含地处理相互依赖。使用两种特征提取方法和多个图像数据集,我们通过实验证实了特征相互依赖的重要性:单独表现良好的特征并不一定表现良好。
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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