Article ID Journal Published Year Pages File Type
4969965 Pattern Recognition Letters 2017 7 Pages PDF
Abstract
In this letter, we present to use an information fusion based multilinear analysis approach to classify multi-focal image stacks. First, image fusion techniques such as the nonsubsampled contourlet transform sparse representation (NSCTSR) are used to combine relevant information of multi-focal images within a given image stack into a single image, which is more informative and complete than any single image in the given image stack. Second, multi-focal images within a stack are fused along 3 orthogonal directions, and multiple features extracted from the fused images along different directions are combined by using canonical correlation analysis (CCA). Finally, because multi-focal image stacks represent the effect of different factors - texture, shape, different instances within the same class and different classes of the objects, we embed the information fusion methods within a multilinear analysis (MA) framework to propose an information fusion based multilinear classifier. The experimental results demonstrated that the information fusion based multilinear classifier can reach a higher classification rate (96.6%) than the previous multilinear based approach (86.4%), even we only use the texture feature instead of the combination of texture and shape features as in the previous work.
Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
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