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Relevance Tuning in Content-Based Retrieval of Structurally-Modeled Images using Particle Swarm Optimization

机译:基于基于内容的结构模型图像的相关性调整使用粒子群优化

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Similarity of images in content-based image retrieval (CBIR) is a subjective measure varying by the user, and requires tuning according to the user's preference. Another issue in CBIR is the need of partial image matching. Structural modeling of the images can be promising in finding a small query image within a large database image. In this work, a graph-based image modeling which assigns image regions to labeled nodes and their adjacency to weighted edges is used. Also, the image similarity measure is tuned according to the user's evaluation, by way of parameter selection using Particle Swarm Optimization (PSO)[1][2]. In the experiments, a small-scale CBIR system based on graph modeling of images was developed. Using the system, it was confirmed that images including the query image of different size and rotation angle could be successfully retrieved. Also, the user's preference in weighting the different aspects of similarity in the feedback information was found to be successfully incorporated in the retrieval after parameter optimization using PSO.
机译:基于内容的图像检索(CBIR)中的图像的相似性是用户改变的主观度量,并且需要根据用户的偏好进行调谐。 CBIR中的另一个问题是需要部分图像匹配。图像的结构建模可以在大数据库图像中找到一个小查询图像。在这项工作中,使用基于图形的图像建模,其将图像区域分配给标记的节点及其对加权边缘的邻接。此外,通过使用粒子群优化(PSO)[1] [2],根据用户的评估调整图像相似度测量。在实验中,开发了一种基于图形模型的小型CBIR系统。使用该系统,确认可以成功检索包括不同大小和旋转角度的查询图像的图像。此外,在使用PSO参数优化之后,发现用户在加权反馈信息中的相似性的不同方面的偏好是在使用PSO的参数优化之后成功结合。

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