Incremental kernel SVD for face recognition with image sets

Tat-Jun Chin, K. Schindler, D. Suter
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引用次数: 62

Abstract

Non-linear subspaces derived using kernel methods have been found to be superior compared to linear subspaces in modeling or classification tasks of several visual phenomena. Such kernel methods include kernel PCA, kernel DA, kernel SVD and kernel QR. Since incremental computation algorithms for these methods do not exist yet, the practicality of these methods on large datasets or online video processing is minimal. We propose an approximate incremental kernel SVD algorithm for computer vision applications that require estimation of non-linear subspaces, specifically face recognition by matching image sets obtained through long-term observations or video recordings. We extend a well-known linear subspace updating algorithm to the nonlinear case by utilizing the kernel trick, and apply a reduced set construction method to produce sparse expressions for the derived subspace basis so as to maintain constant processing speed and memory usage. Experimental results demonstrate the effectiveness of the proposed method
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基于图像集的增量核奇异值分解人脸识别
利用核方法导出的非线性子空间在若干视觉现象的建模或分类任务中优于线性子空间。这些核方法包括核PCA、核DA、核SVD和核QR。由于这些方法的增量计算算法还不存在,这些方法在大型数据集或在线视频处理上的实用性很小。我们提出了一种近似增量核SVD算法,用于需要估计非线性子空间的计算机视觉应用,特别是通过匹配通过长期观察或视频记录获得的图像集来识别人脸。我们利用核技巧将一种著名的线性子空间更新算法扩展到非线性情况,并应用简化集构造方法对派生的子空间基产生稀疏表达式,以保持恒定的处理速度和内存使用。实验结果证明了该方法的有效性
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