Optimal supports for image matching

Michael S. Lew, T. S. Huang
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引用次数: 9

Abstract

The information theoretic approach provides a foundation for determining new insights and solutions toward image modeling and analysis problems. The underlying principle is that a search through an image can be viewed as a reduction of the expected uncertainty in the classification of the image. Specifically, we propose using the Kullback (1959) relative information for the determination of the support which maximizes the feature class separation, which consequently should minimize the probability of misclassifications. The methods are applied to face detection and two view image matching using internationally available databases.
最佳支持图像匹配
信息理论方法为确定图像建模和分析问题的新见解和解决方案提供了基础。其基本原理是,通过图像的搜索可以被视为图像分类中预期不确定性的减少。具体来说,我们建议使用Kullback(1959)相对信息来确定最大程度地实现特征类分离的支持度,从而最大限度地减少错误分类的概率。将该方法应用于国际通用数据库的人脸检测和二视图像匹配。
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