Local normalized linear summation kernel for fast and robust recognition

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摘要

Kernel-based methods are effective for object detection and recognition. However, the computational cost when using kernel functions is high, except when using linear kernels. To realize fast and robust recognition, we apply normalized linear kernels to local regions of a recognition target, and the kernel outputs are integrated by summation. This kernel is referred to as a local normalized linear summation kernel. Here, we show that kernel-based methods that employ local normalized linear summation kernels can be computed by a linear kernel of local normalized features. Thus, the computational cost of the kernel is nearly the same as that of a linear kernel and much lower than that of radial basis function (RBF) and polynomial kernels. The effectiveness of the proposed method is evaluated in face detection and recognition problems, and we confirm that our kernel provides higher accuracy with lower computational cost than RBF and polynomial kernels. In addition, our kernel is also robust to partial occlusion and shadows on faces since it is based on the summation of local kernels.

论文关键词:Local kernel,Normalized kernel,Summation kernel,Fast,Robust,Partial occlusion,Face detection,Face recognition

论文评审过程:Received 6 January 2009, Revised 21 August 2009, Accepted 5 September 2009, Available online 12 September 2009.

论文官网地址:https://doi.org/10.1016/j.patcog.2009.09.009