Discriminative sparse representations for cervigram image segmentation

Shaoting Zhang, Junzhou Huang, Dimitris N. Metaxas, Wei Wang, Xiaolei Huang
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引用次数: 30

Abstract

This paper presents an algorithm using discriminative sparse representations to segment tissues in optical images of the uterine cervix. Because of the large variations in the image appearance caused by the changing of illumination and specular reflection, the different classes of color and texture features in optical images are often overlapped with each other. Using sparse representations they can be transformed to higher dimension with sparse constraints and become more linearly separated. Different from the previous reconstructive sparse representation, the discriminative method considers positive and negative samples simultaneously, which means that these generated dictionaries can be discriminative and perform better for their own classes but worse for the others. New data can be reconstructed from its sparse representations and positive and/or negative dictionaries. Classification can be achieved based on comparing the reconstructive errors. In the experiments we used our method to automatically segment the biomarker AcetoWhite (AW) regions in an archive of the uterine cervix. Compared with the other general methods including SVM, nearest neighbor and reconstructive sparse representations, our approach showed higher sensitivity and specificity.
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判别稀疏表示用于图像分割
本文提出了一种利用判别稀疏表示对子宫颈光学图像进行组织分割的算法。由于光照和镜面反射的变化导致图像外观变化较大,光学图像中不同类别的颜色和纹理特征往往相互重叠。使用稀疏表示,它们可以在稀疏约束下转换到更高的维度,并变得更加线性分离。与之前的重构稀疏表示不同,判别方法同时考虑正样本和负样本,这意味着这些生成的字典可以是判别的,并且对自己的类表现更好,但对其他类表现更差。新数据可以从其稀疏表示和正字典和/或负字典中重建。通过比较重建误差可以实现分类。在实验中,我们使用我们的方法在子宫颈档案中自动分割生物标志物AcetoWhite (AW)区域。与支持向量机、最近邻和重构稀疏表示等常用方法相比,该方法具有更高的灵敏度和特异性。
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