基于滤波器库纹理模式的宫颈病变分类

Yeshwanth Srinivasan, B. Nutter, S. Mitra, B. Phillips, E. Sinzinger
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引用次数: 20

摘要

本文探讨了在子宫颈数字图像中观察到的纹理模式的分类。特别考虑了符号和镶嵌图案的识别和分割问题。首先,利用文本模型研究了大尺度滤波器组对符号和拼接结构的表征能力。然而,基于文本的模型不能一致地对不同受试者子宫颈图像中获得的点状和马赛克切片进行分类。提出了一种将高斯模板匹配滤波与高斯混合模型相结合的标记点分割方法。利用该方法提取的点状和镶嵌状图像特征可以很好地区分点状和镶嵌状图像。结果证明了该方法在检测点和从拼接切片中分离点切片方面的有效性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Cervix Lesions Using Filter Bank-Based Texture Mode
This paper explores the classification of texture patterns observed in digital images of the cervix. In particular, the problem of identifying and segmenting punctations and mosaic patterns is considered. First, the ability of large scale filter banks in characterizing punctations and mosaic structures is studied using texton models. However, texton-based models fail to consistently classify punctation and mosaic sections obtained from cervix images of different subjects. We present a novel method to segment punctations that combines matched filtering using a Gaussian template with Gaussian mixture models. Features extracted from the objects detected using this novel method on punctation and mosaic sections are shown to provide excellent classification between punctation and mosaicism. Results demonstrate the effectiveness of our approach in detecting punctations and separating punctation sections from mosaic sections
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