A Study on Bayes Feature Fusion for Image Classification

Xiaojin Shi, R. Manduchi
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引用次数: 57

Abstract

We consider here the problem of image classification when more than one visual feature are available. In these cases, Bayes fusion offers an attractive solution by combining the results of different classifiers (one classifier per feature). This is a general form of the so-called "naive Bayes" approach. Analyzing the performance of Bayes fusion with respect to a Bayesian classifier over the joint feature distribution, however, is tricky. On the one hand, it is well-known that the latter has lower bias than the former, unless the features are conditionally independent, in which case the two coincide. On the other hand, as noted by Friedman, the low variance associated with naive Bayes estimation may dramatically mitigate the effect of its bias. In this paper, we attempt to assess the tradeoff between these two factors by means of experimental tests on two image data sets using color and texture features. Our results suggest that (1) the difference between the correct classification rates using Bayes fusion and using the joint feature distribution is a function of the conditional dependence of the features (measured in terms of mutual information), however: (2) for small training data size, Bayes fusion performs almost as well as the classifier on the joint distribution.
基于贝叶斯特征融合的图像分类研究
我们在这里考虑了当有多个视觉特征可用时的图像分类问题。在这些情况下,贝叶斯融合通过组合不同分类器的结果(每个特征一个分类器)提供了一个有吸引力的解决方案。这是所谓的“朴素贝叶斯”方法的一般形式。然而,在联合特征分布上分析贝叶斯分类器的贝叶斯融合性能是很棘手的。一方面,众所周知,后者比前者具有更低的偏差,除非特征是条件独立的,在这种情况下,两者是重合的。另一方面,正如弗里德曼所指出的,与朴素贝叶斯估计相关的低方差可能会显著减轻其偏差的影响。在本文中,我们试图通过使用颜色和纹理特征对两个图像数据集进行实验测试来评估这两个因素之间的权衡。我们的研究结果表明:(1)使用贝叶斯融合和使用联合特征分布的正确分类率之间的差异是特征的条件依赖性的函数(以互信息来衡量),然而:(2)对于较小的训练数据规模,贝叶斯融合的表现几乎与分类器在联合分布上的表现一样好。
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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