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Collaborative Linear Coding for Robust Image Classification

机译:协作线性编码用于鲁棒图像分类

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How to generate robust image representations, when there is contamination from noisy pixels within the images, is critical for boosting the performance of image classification methods. However, such an important problem is not fully explored yet. In this paper, we propose a novel image representation learning method, i.e., collaborative linear coding (CLC), to alleviate the negative influence of noisy features in classifying images. Specifically, CLC exploits the correlation among local features in the coding procedure, in order to suppress the interference of noisy features via weakening their responses on coding basis. CLC implicitly divides the extracted local features into different feature subsets, and such feature allocation is indicated by the introduced latent variables. Within each subset, the features are ensured to be highly correlated, and the produced codes for them are encouraged to activate on the identical basis. Through incorporating such regularization in the coding model, the responses of noisy local features are dominated by the responses of informative features due to their rarity compared with the informative features. Thus the final image representation is more robust and distinctive for following classification, compared with the coding methods without considering such high order correlation. Though CLC involves a set of complicated optimization problems, we investigate the special structure of the problems and then propose an efficient alternative optimization algorithm. We verified the effectiveness and robustness of the proposed CLC on multiple image classification benchmark datasets, including Scene 15, Indoor 67, Flower 102, Pet 37, and PASCAL VOC 2011. Compared with the well established baseline LLC, CLC consistently enhances the classification accuracy, especially for the images containing more noises.
机译:当图像中的嘈杂像素污染时,如何生成鲁棒的图像表示形式,对于提高图像分类方法的性能至关重要。但是,这一重要问题尚未得到充分探讨。在本文中,我们提出了一种新颖的图像表示学习方法,即协作线性编码(CLC),以减轻噪声特征对图像分类的负面影响。具体而言,CLC在编码过程中利用局部特征之间的相关性,以通过在编码的基础上减弱噪声特征的响应来抑制噪声特征的干扰。 CLC将提取的局部特征隐式地划分为不同的特征子集,并且这种特征分配由引入的潜在变量指示。在每个子集中,确保特征高度相关,并鼓励为它们产生的代码在相同的基础上激活。通过将这样的正则化合并到编码模型中,由于噪声局部特征的响应与信息特征相比是稀疏的,因此信息特征的响应决定了噪声局部特征的响应。因此,与不考虑这种高阶相关性的编码方法相比,最终的图像表示对于随后的分类更加鲁棒并且更具特色。尽管CLC涉及一组复杂的优化问题,但我们研究了问题的特殊结构,然后提出了一种有效的替代优化算法。我们在多个图像分类基准数据集(包括场景15,室内67,花卉102,Pet 37和PASCAL VOC 2011)上验证了提出的CLC的有效性和鲁棒性。与完善的基准LLC相比,CLC持续提高了分类准确性,特别是对于包含更多噪点的图像。

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