Context-dependent kernels for object classification.

IEEE Trans. Pattern Anal. Mach. Intell.(2011)

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摘要
Kernels are functions designed in order to capture resemblance between data and they are used in a wide range of machine learning techniques, including support vector machines (SVMs). In their standard version, commonly used kernels such as the Gaussian one show reasonably good performance in many classification and recognition tasks in computer vision, bioinformatics, and text processing. In the particular task of object recognition, the main deficiency of standard kernels such as the convolution one resides in the lack in capturing the right geometric structure of objects while also being invariant. We focus in this paper on object recognition using a new type of kernel referred to as "context dependent.” Objects, seen as constellations of interest points, are matched by minimizing an energy function mixing 1) a fidelity term which measures the quality of feature matching, 2) a neighborhood criterion which captures the object geometry, and 3) a regularization term. We will show that the fixed point of this energy is a context-dependent kernel which is also positive definite. Experiments conducted on object recognition show that when plugging our kernel into SVMs, we clearly outperform SVMs with context-free kernels.
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关键词
energy function,fidelity term,context-free kernel,object classification,standard kernel,object recognition,recognition task,context-dependent kernel,object geometry,object recognition show,context-dependent kernels,regularization term,positive definite,support vector machines,computational geometry,machine learning,fixed point,bioinformatics,kernel,artificial intelligence,cluster analysis,image classification,context dependent,convolution,computer vision,algorithms,feature extraction,svm,support vector machine
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