基于半智能自适应滤波器的色素网络结构检测

L. Nowak, M. Ogorzałek, M. P. Pawlowski
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引用次数: 4

摘要

本文介绍了一种基于皮肤镜结构的色素网络检测方法。这种结构在皮肤镜检查中被用作临床评估色素皮肤病变的标准之一,可以指示病变是否为恶性。对于检测过程,我们开发了一种自适应滤波器,灵感来自群体智能(SI)优化算法。所介绍的滤波方法以非线性方式应用于处理过的皮肤病变的皮肤镜图像。非线性方法源自SI算法,并允许选择性图像滤波。在过滤过程的开始,过滤器(代理)随机应用于图像的各个部分,其中每个过滤器(代理)根据其周围的邻域调整其输出。代理与邻近的其他代理共享其信息。这是一种解决皮肤镜结构检测问题的新方法,它具有高度的灵活性,可以在不需要之前的预处理阶段的情况下应用于图像。这一特征是非常可取的,主要是因为在大多数计算机辅助诊断的情况下,输入图像需要进行预处理(例如:亮度归一化、直方图方程、对比度增强、颜色归一化),其结果可能会引入不必要的伪影,因此这一步需要人工验证。应用该方法的结果可作为计算ABCD规则的总皮肤镜评分(TDS)的鉴别结构标准之一。
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Pigmented network structure detection using semi-smart adaptive filters
This paper demonstrates a method for detecting pigment based dermatoscopic structure called pigment network. This structure is used in dermatoscopy as one of the criteria in clinical evaluation of pigmented skin lesions and can indicate if a lesion is of malignant nature. For detection process we have developed an adaptive filter, inspired by Swarm Intelligence (SI) optimization algorithms. The introduced filtering method is applied in a non-linear manner, to processed dermatoscopic image of a skin lesion. The non-linear approach derives from SI algorithms, and allows selective image filtering. In the beginning of filtration process, the filters (agents) are randomly applied to sections of the image, where each of them adapts its output based on the neighborhood surrounding it. Agents share its information with other agents that are located in immediate vicinity. This is a new approach to the problem of dermatoscopic structure detection, and it is highly flexible, as it can be applied to images without the need of previous pre-processing stage. This feature is highly desirable, mainly due to the fact that in most cases of computer aided diagnostic, input images need to be pre-processed (e.g.: brightness normalization, histogram equation, contrast enhancement, color normalization) and results of this can introduce unwanted artifacts, so this step need to be verified by human. Results of applying the introduced method can be used as one of the differential structures criteria for calculating the Total Dermatoscopy Score (TDS) of the ABCD rule.
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