Semi-supervised Deep Linear Discriminant Analysis for Histopathology Image Classification

Lei Cui, Jun Feng, L. Yang
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引用次数: 1

Abstract

Recently, deep learning techniques achieve remarkable classification performance on histopathology images. How-ever, they usually require a large amount of labeled training images to obtain satisfactory accuracy, and manual labeling is labor expensive and time consuming. To address this issue, in this paper, we propose a novel semi-supervised deep learning framework, namely semi-supervised deep linear discriminant analysis, by taking advantage of the deep neural network (DNN) and the graph to simultaneously exploit the semantic information of labeled and unlabeled images for classification. Specifically, we first replace the loss function of the DNN with the objective function of linear discriminant analysis to produce features minimizing the intra-class distance yet maximizing the inter-class distance, in order to construct a robust and effective graph Laplacian. Afterwards, we design a new objective function via employing the graph constructed by features of labeled and un-labeled images, and then adopt this objective as the loss function of the DNN to produce features for classification. Experiments on skeletal muscle and lung cancer images demonstrate the proposed framework outperforms several recent state of the arts.
组织病理学图像分类的半监督深度线性判别分析
近年来,深度学习技术在组织病理学图像上取得了显著的分类效果。然而,它们通常需要大量标记的训练图像才能获得令人满意的准确性,而人工标记既费时又费力。为了解决这一问题,本文提出了一种新的半监督深度学习框架,即半监督深度线性判别分析,利用深度神经网络(DNN)和图同时利用标记和未标记图像的语义信息进行分类。具体来说,我们首先用线性判别分析的目标函数代替DNN的损失函数,生成类内距离最小而类间距离最大的特征,从而构造一个鲁棒有效的图拉普拉斯。然后,我们利用标记和未标记图像的特征构造的图来设计一个新的目标函数,然后将该目标作为DNN的损失函数来产生用于分类的特征。对骨骼肌和肺癌图像的实验表明,所提出的框架优于最近的几个艺术状态。
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