Abstract:The effective information of 3D multifocal image stack is distributed on different image layers, so the feature extraction and classification of image stacks are significantly different from that of 2D images. In this paper, an image fusion based multilinear analysis approach is presented to use for classification of multifocal image stacks. First, the image fusion techniques are used to combine the relevant information of multifocal images within a given image stack into a single image. Besides, multifocal 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). Furthermore, because multifocal image stacks represent the effect of different factorstexture, shape, different instances within the same class and different classes of objects, the image fusion method within a multilinear framework is embeded to propose an image fusion based multilinear classifier. The experimental results demonstrate that the multidirection image fusion based multilinear classifier can reach a higher classification rate (97%) than other classification methods.