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Discriminant Manifold Learning via Sparse Coding for Image Analysis

机译:通过稀疏编码判别歧管学习进行图像分析

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Traditional subspace learning methods directly calculate the statistical properties of the original input images, while ignoring different contributions of different image components. In fact, the noise (e.g., illumination, shadow) in the image often has a negative influence on learning the desired subspace and should have little contribution to image recognition. To tackle this problem, we propose a novel subspace learning method named Discriminant Manifold Learning via Sparse Coding (DML_SC). In our method, we first decompose the input image into several components via dictionary learning, and then regroup the components into a More Important Part (MIP) and a Less Important Part (LIP). The MIP can be regarded as the clean part of the original image residing on a nonlinear submanifold, while LIP as noise in the image. Finally, the MIP and LIP are incorporated into manifold learning to learn a desired discriminative subspace. The proposed method is able to deal with data with and without labels, yielding supervised and unsu-pervised DML SCs. Experimental results show that DML_SC achieves best performance on image recognition and clustering tasks compared with well-known subspace learning and sparse representation methods.
机译:传统的子空间学习方法直接计算原始输入图像的统计属性,同时忽略不同图像组件的不同贡献。事实上,图像中的噪音(例如,照明,阴影)通常对学习所需子空间具有负面影响,并且应该对图像识别几乎没有贡献。为了解决这个问题,我们提出了一种通过稀疏编码(DML_SC)命名判别歧管学习的新型子空间学习方法。在我们的方法中,我们首先通过字典学习将输入图像分解为多个组件,然后将组件重新组合成更重要的部分(MIP)和不太重要的部分(唇)。 MIP可以被视为驻留在非线性子纤维上的原始图像的清洁部分,而唇部作为图像中的噪声。最后,夹层和唇部被纳入歧管学习以学习所需的判别子空间。所提出的方法能够处理具有和没有标签的数据,产生监督和Unsu-vervised DML SCS。实验结果表明,与众所周知的子空间学习和稀疏表示方法相比,DML_SC对图像识别和聚类任务的最佳性能。

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