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Efficient kernel descriptor for image categorization via pivots selection

机译:通过枢轴选择进行图像分类的高效内核描述符

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Patch-level features are essential for achieving good performance in compute vision tasks. Besides well-known predefined patch-level descriptors such as SIFT and HOG, the kernel descriptor (KD) method [1] offers a new way to ‘grow up’ features from a match kernel defined over image patch pairs using kernel principal component analysis (KPCA). However, under this technical construction, all joint basis vectors are involved in the kernel descriptor computation, which is both expensive and not necessary. To address this problem, we present efficient kernel descriptor (EKD), which is built upon incomplete Cholesky decomposition. EKD automatically selects a small number of pivot features to achieve better computational efficiency. Perhaps due to parsimony, we find surprisingly that despite efficiency, the EKD approach achieved superior image/scene categorization performance than the original kernel descriptor approach.
机译:补丁程序级功能对于在计算视觉任务中实现良好性能至关重要。除了众所周知的预定义补丁级别描述符(例如SIFT和HOG)之外,内核描述符(KD)方法[1]还提供了一种新方法,可以使用内核主成分分析从图像补丁对上定义的匹配内核中“增长”特征( KPCA)。然而,在这种技术构造下,所有联合基向量都参与了内核描述符的计算,这既昂贵又不必要。为了解决这个问题,我们提出了有效的内核描述符(EKD),它是基于不完整的Cholesky分解建立的。 EKD会自动选择少量的枢轴要素,以实现更好的计算效率。也许是由于简约性,我们惊奇地发现尽管效率高,但EKD方法仍比原始内核描述符方法具有更好的图像/场景分类性能。

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