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Multi-Channel Feature Dictionaries for RGB-D Object Recognition

机译:用于RGB-D对象识别的多通道特征字典

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Hierarchical matching pursuit (HMP) is a popular feature learning method for RGB-D object recognition. However, the feature representation with only one dictionary for RGB channels in HMP does not capture sufficient visual information. In this paper, we propose multi-channel feature dictionaries based feature learning method for RGB-D object recognition. The process of feature extraction in the proposed method consists of two layers. The K-SVD algorithm is used to learn dictionaries in sparse coding of these two layers. In the first-layer, we obtain features by performing max pooling on sparse codes of pixels in a cell. And the obtained features of cells in a patch are concatenated to generate patch jointly features. Then, patch jointly features in the first-layer are used to learn the dictionary and sparse codes in the second-layer. Finally, spatial pyramid pooling can be applied to the patch jointly features of any layer to generate the final object features in our method. Experimental results show that our method with first or second-layer features can obtain a comparable or better performance than some published state-of-the-art methods.
机译:分层匹配追踪(HMP)是用于RGB-D对象识别的流行特征学习方法。但是,在HMP中仅具有一个RGB通道字典的特征表示无法捕获足够的视觉信息。在本文中,我们提出了一种基于多通道特征字典的特征学习方法来进行RGB-D目标识别。该方法的特征提取过程由两层组成。 K-SVD算法用于学习这两个层的稀疏编码中的字典。在第一层中,我们通过对单元格中像素的稀疏代码执行最大池化来获得特征。然后,将补丁中获得的单元格特征连接起来,共同生成补丁特征。然后,使用第一层中的联合修补功能来学习第二层中的字典和稀疏代码。最后,在我们的方法中,空间金字塔池可以联合应用于任何图层的面片特征,以生成最终的对象特征。实验结果表明,我们的具有第一层或第二层功能的方法可以获得比某些已发布的最新方法可比或更好的性能。

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