基于Sarsa强化算法的皮肤镜图像病变检测

S.Mohammad Seyyed Ebrahimi, H. Pourghassem, M. Ashourian
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引用次数: 10

摘要

皮肤镜检查是诊断黑色素瘤和其他皮肤病的主要成像技术之一。由于人工解释的困难和主观性,皮肤镜图像的自动和计算机化分析已经开辟了一个重要的研究领域。皮肤病变检测是分析的第一步。寻找病灶分割的最佳阈值是图像处理中的一项重要任务。不同的阈值设定方法已经存在。在这项工作中,我们使用了众所周知的阈值方法的组合,并通过Sarsa强化算法将它们融合在一起,从而得到一个增强的阈值。增强代理学习不同阈值方法的最优权值,最后用最优阈值分割皮肤镜图像。设计了一个奖励函数,用于实现二值输出图像与原始灰度图像的相似率,并计算应施加给增强代理的奖励/惩罚信号。我们使用三种阈值方法来组合增强剂,并将检测到的病变与三位不同皮肤科医生确定的基础真相进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lesion detection in dermoscopy images using Sarsa Reinforcement algorithm
Dermoscopy is one of the major imaging techniques used in diagnoses of Melanoma and other skin diseases. Because of difficulties and subjectivity of human interpretation, automatic and computerized analysis of dermoscopic images has opened an important research area. Skin lesion detection is as the first step in this analysis. Finding an optimal threshold for segmenting the lesion is a severe task in image processing. Different methods for thresholding already exist. In this work, we use a combination of well-known thresholding methods and fuse them by Sarsa Reinforcement algorithm which leads to a reinforced threshold. The reinforced agent learns optimal weights for different thresholding methods and finally segments the dermoscopic image with optimal threshold. A reward function is designed for achieving the similarity ratio between the binary output image and original gray level image and calculating reward/punish signal which should be exerted to reinforced agent. We use three thresholding methods for combination in the reinforced agent and the detected lesions are compared with the ground-truth which is determined by three different dermatologists.
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