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Efficient similarity measure via Genetic algorithm for content based medical image retrieval with extensive features

机译:基于内容的基于内容的医学图像检索的高效相似度测量

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Nowadays, quick search and retrieval is needed in all kinds of growing database to find relevant details quickly. Content Based Image Retrieval (CBIR) plays a significant role in the image processing field. Based on image content, CBIR extracts images that are relevant to the given query image from large image archives. Images relevant to a given query image are retrieved by the CBIR system utilizing either low level features such as shape, color, texture and homogeneity or high level features such as human perception. Most of the CBIR systems available in the literature extract only concise feature sets that limit the retrieval efficiency. In this paper, we are using Medical images for retrieval and the feature extraction is used along with color, shape and texture feature extraction to extract the query image from the database medical images. When a query image is given, the features are extracted and then the Genetic Algorithm-based similarity measure is performed between the query image features and the database image features. The Squared Euclidean Distance (SED) computes the similarity measure in determining the Genetic Algorithm fitness. Hence, from the Genetic Algorithm-based similarity measure, the database images that are relevant to the given query image are retrieved. The proposed CBIR technique is evaluated by querying different medical images and the retrieval efficiency is evaluated in the retrieval results.
机译:如今,各种越来越多的数据库需要快速搜索和检索,以快速查找相关细节。基于内容的图像检索(CBIR)在图像处理字段中起着重要作用。基于图像内容,CBIR从大图像档案中提取与给定查询映像相关的图像。利用诸如形状,颜色,纹理和均匀性或高级特征,如人类感知,由CBIR系统检索与给定查询图像相关的图像。文献中可用的大多数CBIR系统仅提取简明特征集,限制检索效率。在本文中,我们使用的医学图像进行检索,并且特征提取与颜色,形状和纹理特征提取一起使用,以从数据库医学图像中提取查​​询图像。当给出查询图像时,提取特征,然后在查询图像特征和数据库图像特征之间执行基于遗传算法的相似度量。平方欧几里德距离(SED)计算在确定遗传算法适合度时的相似度测量。因此,从基于遗传算法的相似度测量,检索与给定查询图像相关的数据库图像。通过查询不同的医学图像来评估所提出的CBIR技术,并在检索结果中评估检索效率。

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