HEp-2细胞图像的类特异性分级分类:以两类为例

Krati Gupta, Vibha Gupta, A. Sao, A. Bhavsar, A. D. Dileep
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引用次数: 12

摘要

我们提出并分析了一种新的HEp-2细胞图像分类框架。它基于两个重要方面。首先,我们建议利用关于类的视觉特征的专家知识来制定特定于类的图像特征。其次,考虑到问题涉及的类数量较少,我们将分类任务视为分层验证子任务。因此,整个分类问题被提出作为每个类的验证,使用其特定于类的特征。目前的研究报告了使用核膜和高尔基类的结果。我们证明了我们的框架通过简单有效的特征定义产生了很高的分类率,并且只有(20%)的数据用于训练。我们还分析了重要的方面,如与非分层方法的比较,以及对早期疾病检测重要的低对比度图像的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Class-Specific Hierarchical Classification of HEp-2 Cell Images: The Case of Two Classes
We propose and analyze a novel framework for classification of HEp-2 cell images. It is based upon two important aspects. First, we propose to utilize the expert knowledge about the visual characteristics of classes to formulate class-specific image features. Secondly, realizing that the problem involves a small number of classes, we treat the classification task as hierarchical verification subtasks. Thus, the overall classification problem is posed as a verification of each class, using its class-specific features. The current study reports the results using the Nuclear Membrane and Golgi classes. We demonstrate that our framework yields high classification rate with simple and efficient feature definitions, and only (20%) of the data for training. We also analyze important aspects such as comparison with non-hierarchical approach, and performance on low-contrast images which are important for early disease detection.
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