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Improving Classification Accuracy by Comparing Local Features through Canonical Correlations

机译:通过规范相关性比较局部特征,提高分类精度

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Classifying images using features extracted from densely sampled local patches has enjoyed significant success in many detection and recognition tasks. It is also well known that generally more than one type of feature is needed to achieve robust classification performance. Previous works using multiple features have addressed this issue either through simple concatenation of feature vectors or through combining feature specific kernels at the classifier level. In this work we introduce a novel approach for combining features at the feature level by projecting two types of features onto two respective subspaces in which they are maximally correlated. We use their correlation as an augmented feature and demonstrate improvement in classification accuracy over simple combination through concatenation in a pedestrian detection framework.
机译:使用从密集采样的本地斑块中提取的特征对图像进行分类在许多检测和识别任务中都取得了巨大的成功。还众所周知,通常需要一种以上类型的特征来实现鲁棒的分类性能。以前使用多个特征的工作已经通过简单地组合特征向量或通过在分类器级别组合特定于特征的内核解决了该问题。在这项工作中,我们介绍了一种新颖的方法,通过将两种类型的特征投影到与它们最大相关的两个子空间上,从而在特征级别组合特征。我们将它们的相关性用作增强功能,并通过在行人检测框架中进行级联,证明了通过简单组合实现的分类精度提高。

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