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Tissue Classification using Cluster Features for Lesion Detection in Digital Cervigrams

机译:基于数码Cervigram的群体特征的组织分类

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In this paper, we propose a new method for automated detection and segmentation of different tissue types in digitized uterine cervix images using mean-shift clustering and support vector machines (SVM) classification on cluster features. We specifically target the segmentation of precancerous lesions in a NCI/NLM archive of 60,000 cervigrams. Due to large variations in image appearance in the archive, color and texture features of a tissue type in one image often overlap with that of a different tissue type in another image. This makes reliable tissue segmentation in a large number of images a very challenging problem. In this paper, we propose the use of powerful machine learning techniques such as Support Vector Machines (SVM) to learn, from a database with ground truth annotations, critical visual signs that correlate with important tissue types and to use the learned classifier for tissue segmentation in unseen images. In our experiments, SVM performs better than un-supervised methods such as Gaussian Mixture clustering, but it does not scale very well to large training sets and does not always guarantee improved performance given more training data. To address this problem, we combine SVM and clustering so that the features we extracted for classification are features of clusters returned by the mean-shift clustering algorithm. Compared to classification using individual pixel features, classification by cluster features greatly reduces the dimensionality of the problem, thus it is more efficient while producing results with comparable accuracy.
机译:在本文中,我们使用平均移位聚类和支持向量机(SVM)对集群特征的分类来提出了一种新的自动检测和分割不同组织类型的不同组织类型的分割。我们专门针对60,000个Cervigram的NCI / NLM档案中癌前病变的分割。由于在档案中的图像外观变化的大变化,一个图像中的组织类型的颜色和纹理特征通常与另一个图像中的不同组织类型的复制。这使得在大量图像中具有可靠的组织分割是一个非常具有挑战性的问题。在本文中,我们提出了强大的机器学习技术,如支持向量机(SVM)来学习,从具有地面真理注释的数据库,与重要组织类型相关的临界视觉符号,并使用学习分类器进行组织分割在看不见的图像中。在我们的实验中,SVM比Un-Inverioned方法更好地表现出高斯混合聚类,但它对大型训练集并不符合速度,并且并不总是保证提供更多培训数据的性能。为了解决这个问题,我们组合SVM和群集,以便我们提取的分类的功能是由平均移位聚类算法返回的群集的特征。与使用单个像素特征进行分类相比,群集特征的分类大大降低了问题的维度,因此在产生具有可比性的精度的结果时更有效。

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