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Principal component analysis based on block-norm minimization

机译:基于块状最小化的主成分分析

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Principal Component Analysis (PCA) has attracted considerable interest for years in the studies of image recognition. So far, several state-of-the-art PCA-based robust feature extraction techniques have been proposed, such as PCA-L1 and R1-PCA. Since those methods treat image by its transferred vector form, it leads to the loss of latent information carried by images and loses sight of the spatial structural details of image. To exploit these two kinds of information and improve robustness to outliers, we propose principal component analysis based on block-norm minimization (Block-PCA) which employs block-norm to measure the distance between an image and its reconstruction. Block-norm imposes L2-norm constrain on a local group of pixel blocks and uses L1-norm constrain among different groups. In the case where parts of an image are corrupted, Block-PCA can effectively depress the effect of corrupted blocks and make full use of the rest. In addition, we propose an alternative iterative algorithm to solve the Block-PCA model. Performance is evaluated on several datasets and the results are compared with those of other PCA-based methods.
机译:主要成分分析(PCA)多年来在图像识别研究中引起了相当大的兴趣。到目前为止,已经提出了几种最先进的基于PCA的鲁棒特征提取技术,例如PCA-L1和R1-PCA。由于这些方法通过其转移的向量形式处理图像,因此它导致图像携带的潜在信息的丢失并失去视觉的图像的空间结构细节。为了利用这两种信息并提高异常值的鲁棒性,我们提出了基于块 - 常态最小化(块PCA)的主成分分析,该组件分析采用块标准来测量图像之间的距离及其重建。 Block-Norm在本地像素块组上强制限制L2-NOM限制,并在不同的组之间使用L1-NOM限制。在图像的部分损坏的情况下,Block-PCA可以有效地降低损坏块的效果并充分利用其余部分。此外,我们提出了一种替代的迭代算法来解决块PCA模型。在几个数据集中评估性能,并将结果与​​其他基于PCA的方法进行比较。

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