Quaternion Grassmann average network for learning representation of histopathological image

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Histopathological image analysis works as ‘gold standard’ for cancer diagnosis. Its computer-aided approach has attracted considerable attention in the field of digital pathology, which highly depends on the feature representation for histopathological images. The principal component analysis network (PCANet) is a novel unsupervised deep learning framework that has shown its effectiveness for feature representation learning. However, PCA is susceptible to noise and outliers to affect the performance of PCANet. The Grassmann average (GA) is superior to PCA on robustness. In this work, a GA network (GANet) algorithm is proposed by embedding GA algorithm into the PCANet framework. Moreover, since quaternion algebra is an excellent tool to represent color images, a quaternion-based GANet (QGANet) algorithm is further developed to learn effective feature representations containing color information for histopathological images. The experimental results based on three histopathological image datasets indicate that the proposed QGANet achieves the best performance on the classification of color histopathological images among all the compared algorithms.

论文关键词:Principal component analysis network (PCANet),Quaternion algebra,Quaternion Grassmann averages network (QGANet),Color histopathological image

论文评审过程:Received 2 September 2017, Revised 7 November 2018, Accepted 15 December 2018, Available online 19 December 2018, Version of Record 4 January 2019.

论文官网地址:https://doi.org/10.1016/j.patcog.2018.12.013