Boundary delineation of reflux esophagitis lesions from endoscopic images using color and texture

Danh H. Vu, Long-Thuy Nguyen, Van-Tuan Nguyen, Thanh-Hai Tran, V. Dao, Hai Vu
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引用次数: 1

Abstract

Automatic assessment of medical images and endoscopic images in particular is an attractive research topic recent years. To achieve this goal, many tasks must be conducted for example lesions detection, segmentation and classification. In order to design suitable models for such tasks, it would be preferable to know at first: i) which characteristics that differentiate a lesion from a normal region; ii) how large is the boundary of these two regions that still allows to distinguish them. This paper presents an in-depth study of the role of color and texture features for delineation of boundary between a lesion region and a background region. To this end, from the groundtruth contour of a manually segmented lesion, we first expand two margins in two directions. We name inner margin in the lesion region and outer margin in the background region. We then extract color dependent features in different color spaces (HSV, RGB, Lab) and texture features (LBP, HOG, GLCM) on these two margins. Finally we deploy the Support Vector Machine (SVM) technique to classify two classes (lesion and non-lesion). Extensive experiments conducted on a dataset of endoscopic images answer to our aforementioned questions and give some suggestions for designing suitable models of lesion detection in the future.
内镜图像中反流性食管炎病变边界的颜色和纹理划分
医学图像,尤其是内窥镜图像的自动评估是近年来一个很有吸引力的研究课题。为了实现这一目标,必须进行许多任务,例如病灶检测,分割和分类。为了设计适合此类任务的模型,最好首先知道:i)哪些特征将病变与正常区域区分开来;Ii)这两个区域的边界有多大才可以区分它们。本文对颜色和纹理特征在病灶区域和背景区域边界划分中的作用进行了深入研究。为此,我们首先从人工分割病灶的真底轮廓出发,在两个方向上扩展两个边缘。我们将病灶区命名为内缘,背景区命名为外缘。然后,我们在这两个边缘上提取不同颜色空间(HSV, RGB, Lab)和纹理特征(LBP, HOG, GLCM)中的颜色相关特征。最后利用支持向量机(SVM)技术将图像分为病变和非病变两类。在内窥镜图像数据集上进行的大量实验回答了我们的上述问题,并为将来设计合适的病变检测模型提供了一些建议。
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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