Edge detection in the feature space

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摘要

To build a consistent image representation model which can process the non-Gaussian distribution data, a novel edge detection method (KPCA-SCF) based on the kernel method is proposed. KPCA-SCF combines kernel principal component analysis and kernel subspace classification proposed in this paper to extract edge features. KPCA-SCF was tested and compared with linear PCA, nonlinear PCA and conventional methods such as Sobel, LOG, Canny, etc. Experiments on synthetic and real-world images show that KPCA-SCF is more robust under noisy conditions. KPCA-SCF's score of F-measure (0.44) ranks 11th in the Berkeley segmentation dataset and benchmark, it (0.54) ranks 10th tested on a noised image.

论文关键词:Edge detection,Image processing,Image feature representation,Kernel principal component analysis,Subspace classification,Feature space

论文评审过程:Received 17 August 2009, Revised 28 May 2010, Accepted 16 August 2010, Available online 16 September 2010.

论文官网地址:https://doi.org/10.1016/j.imavis.2010.08.008