Design of Non-Linear Kernel Dictionaries for Object Recognition
IEEE Transactions on Image Processing2013Vol. 22(12), pp. 5123–5135
Citations Over TimeTop 1% of 2013 papers
Abstract
In this paper, we present dictionary learning methods for sparse signal representations in a high dimensional feature space. Using the kernel method, we describe how the well known dictionary learning approaches, such as the method of optimal directions and KSVD, can be made nonlinear. We analyze their kernel constructions and demonstrate their effectiveness through several experiments on classification problems. It is shown that nonlinear dictionary learning approaches can provide significantly better performance compared with their linear counterparts and kernel principal component analysis, especially when the data is corrupted by different types of degradations.
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