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HEP-2 cell image classification using local features and K-means clustering based joint sparse representation

机译:基于局部特征和基于K均值聚类的联合稀疏表示的HEP-2细胞图像分类

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Human Epithelial type 2 (HEp-2) cells are of great importance in the diagnosis of autoimmune disorder. Traditional approach requires specialists to manually observe the cells and make decisions, which is laborious, time-consuming and easily influenced by subjective experiences. Therefore, in this paper, we proposed a general framework based on Gabor Ternary Pattern (GTP) and joint sparse representation to automatically classify cell images. The method firstly searches the affine invariant key points in cell images by a multiscale canny detector, and then extracts GTP features from the local region around the points. Finally, the joint sparse representation classifier (SRC) is applied to determine the labels of the cell images. To reduce the computation costs required by the large dictionary, a k-means based approach was proposed to reduce the dictionary size. We conduct experiments on the publicly available ICPR cell image database and get a promising result. The experiments show that the approach based on GTP outperforms the SIFT-based approach and the adoption of k-means clustering not only reduce the dictionary size, but also significantly improve the classification accuracy.
机译:人性上皮2型(HEP-2)细胞在诊断自身免疫性疾病中具有重要意义。传统方法要求专家手动观察细胞并做出决定,这是艰苦的,耗时,容易受到主观体验的影响。因此,在本文中,我们提出了一种基于Gabor三元模式(GTP)的一般框架和联合稀疏表示,以自动对细胞图像进行分类。该方法首先通过多尺度Canny检测器搜索小区图像中的仿射不变密钥点,然后从点周围从本地区域提取GTP特征。最后,应用联合稀疏表示分类器(SRC)以确定小区图像的标签。为了减少大词典所需的计算成本,提出了基于K-Means的方法来减少字典大小。我们对公开可用的ICPR细胞图像数据库进行实验,并获得有希望的结果。实验表明,基于GTP的方法优于基于筛选的方法和通过K-Means聚类的采用不仅减少了字典规模,而且显着提高了分类准确性。

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