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Color Independent Components Based SIFT Descriptors for Object/Scene Classification

机译:基于颜色独立成分的SIFT描述符,用于对象/场景分类

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摘要

In this paper, we present a novel color independent components based SIFT descriptor (termed CIC-SIFT) for object/scene classification. We first learn an efficient color transformation matrix based on independent component analysis (ICA), which is adaptive to each category in a database. The ICA-based color transformation can enhance contrast between the objects and the background in an image. Then we compute CIC-SIFT descriptors over all three transformed color independent components. Since the ICA-based color transformation can boost the objects and suppress the background, the proposed CIC-SIFT can extract more effective and discriminative local features for object/scene classification. The comparison is performed among seven SIFT descriptors, and the experimental classification results show that our proposed CIC-SIFT is superior to other conventional SIFT descriptors.
机译:在本文中,我们提出了一种基于颜色独立成分的新颖SIFT描述符(称为CIC-SIFT),用于对象/场景分类。我们首先学习基于独立成分分析(ICA)的有效颜色转换矩阵,该矩阵适用于数据库中的每个类别。基于ICA的颜色转换可以增强图像中对象和背景之间的对比度。然后,我们在所有三个变换的颜色独立分量上计算CIC-SIFT描述符。由于基于ICA的颜色变换可以增强对象并抑制背景,因此所提出的CIC-SIFT可以提取出更有效和更具区分性的局部特征,以进行对象/场景分类。在七个SIFT描述符之间进行了比较,实验分类结果表明,我们提出的CIC-SIFT优于其他常规SIFT描述符。

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