Data Clustering Methods for Recognition of Endoscopic Images in the Problems of Computer Medical Diagnosis

Р. В. Козарь, Н. С. Конойко, А. А. Навроцкий, Raman V. Kozar, Natalia S. Konoiko, Anatoliy A. Navrotsky
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引用次数: 0

Abstract

This paper presents the results of the analysis of existing methods for clustering data obtained during endoscopy of a larynx. A modification of the Viola-Jones method for image recognition using the flexible exit criterion is proposed. The Viola-Jones method explores all areas in the image and decides whether the recognized area belongs to the desired one by passing through a classified cascade. Endoscopic images have a large number of features, such as flare, noise, etc., which degrade the quality of recognition. To improve the quality of recognition, clustering with a flexible exit criterion was proposed, which satisfies the scalability criteria: changing the decision of the solution, instead of moving to another recognition area. It has been established that the proposed modification of the Viola-Jones method shows higher recognition results for endoscopic images.
计算机医学诊断中内窥镜图像识别的数据聚类方法
本文介绍了对喉内窥镜检查中获得的数据进行聚类的现有方法的分析结果。提出了一种利用灵活退出准则对Viola-Jones图像识别方法进行改进的方法。Viola-Jones方法探索图像中的所有区域,并通过分类级联来决定识别的区域是否属于所需区域。内窥镜图像具有大量的特征,如光斑、噪声等,降低了识别质量。为了提高识别质量,提出了具有灵活退出准则的聚类,该准则满足可扩展性准则:改变解决方案的决策,而不是转移到另一个识别区域。已经证实,所提出的对Viola Jones方法的修改对内窥镜图像显示出更高的识别结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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