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用于目标检测的判别性特征共现选择

Discriminative feature co-occurrence selection for object detection.

作者信息

Mita Takeshi, Kaneko Toshimitsu, Stenger Bjorn, Hori Osamu

机构信息

Multimedia Laboratory, Corporate Research and Development Center, Toshiba Corporation, Kawasaki, Japan.

出版信息

IEEE Trans Pattern Anal Mach Intell. 2008 Jul;30(7):1257-69. doi: 10.1109/TPAMI.2007.70767.

Abstract

This paper describes an object detection framework that learns the discriminative co-occurrence of multiple features. Feature co-occurrences are automatically found by Sequential Forward Selection at each stage of the boosting process. The selected feature co-occurrences are capable of extracting structural similarities of target objects leading to better performance. The proposed method is a generalization of the framework proposed by Viola and Jones, where each weak classifier depends only on a single feature. Experimental results obtained using four object detectors, for finding faces and three different hand gestures, respectively, show that detectors trained with the proposed algorithm yield consistently higher detection rates than those based on their framework while using the same number of features.

摘要

本文描述了一种目标检测框架,该框架学习多个特征的判别性共现。在提升过程的每个阶段,通过顺序前向选择自动找到特征共现。所选的特征共现能够提取目标对象的结构相似性,从而带来更好的性能。所提出的方法是对Viola和Jones提出的框架的推广,其中每个弱分类器仅依赖于单个特征。分别使用四种目标检测器来检测面部和三种不同手势所获得的实验结果表明,在使用相同数量特征的情况下,使用所提出算法训练的检测器比基于其框架的检测器具有更高的一致检测率。

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