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Wavelet optimization for content-based image retrieval in medical databases.

机译:用于医学数据库中基于内容的图像检索的小波优化。

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We propose in this article a content-based image retrieval (CBIR) method for diagnosis aid in medical fields. In the proposed system, images are indexed in a generic fashion, without extracting domain-specific features: a signature is built for each image from its wavelet transform. These image signatures characterize the distribution of wavelet coefficients in each subband of the decomposition. A distance measure is then defined to compare two image signatures and thus retrieve the most similar images in a database when a query image is submitted by a physician. To retrieve relevant images from a medical database, the signatures and the distance measure must be related to the medical interpretation of images. As a consequence, we introduce several degrees of freedom in the system so that it can be tuned to any pathology and image modality. In particular, we propose to adapt the wavelet basis, within the lifting scheme framework, and to use a custom decomposition scheme. Weights are also introduced between subbands. All these parameters are tuned by an optimization procedure, using the medical grading of each image in the database to define a performance measure. The system is assessed on two medical image databases: one for diabetic retinopathy follow up and one for screening mammography, as well as a general purpose database. Results are promising: a mean precision of 56.50%, 70.91% and 96.10% is achieved for these three databases, when five images are returned by the system.
机译:我们在本文中提出了一种基于内容的图像检索(CBIR)方法,用于医学领域的诊断辅助。在提出的系统中,以通用方式索引图像,而无需提取特定于域的特征:从其小波变换为每个图像构建签名。这些图像特征描述了分解的每个子带中小波系数的分布。然后定义一个距离量度,以比较两个图像签名,从而在医师提交查询图像时检索数据库中最相似的图像。为了从医学数据库检索相关图像,签名和距离度量必须与图像的医学解释相关。因此,我们在系统中引入了多个自由度,以便可以将其调整到任何病理和图像形态。特别是,我们建议在提升方案框架内调整小波基础,并使用自定义分解方案。权重也在子带之间引入。通过使用数据库中每个图像的医学等级来定义性能指标,通过优化过程来调整所有这些参数。该系统在两个医学图像数据库上进行了评估:一个用于糖尿病性视网膜病变随访,一个用于乳腺钼靶筛查,以及一个通用数据库。结果令人鼓舞:当系统返回五个图像时,这三个数据库的平均精度达到56.50%,70.91%和96.10%。

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