Abstract

Texture is an important visual feature for computer vision tasks. In applications such as image retrieval and computer image understanding, texture similarity should be measured in a manner that is invariant to texture scale and orientation, as well as consistent with human perception. However, most existing computational features and similarity measures are not perceptually consistent. A solution is to map textures into an invariant and perceptual space such that similarity measured in the space is perceptually consistent. The paper presents a hybrid method, using a convolutional neural network and SVM, to perform the invariant and perceptual mapping. Test results show that it's overall performance is better than that of an individual neural network. and a SVM.

Full Text
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