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Localized content-based image retrieval using saliency-based graph learning framework

机译:使用基于显着性的图学习框架进行基于内容的本地化图像检索

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Localized content-based image retrieval (LCBIR) has emerged as a hot topic more recently due to the fact that in the scenario of CBIR, the user is interested in a portion of the image and the rest of the image is irrelevant. In this paper, we propose a novel region-level relevance feedback method to solve the LCBIR problem. Firstly, the visual attention model is employed to measure the regional saliency of each image in the feedback image set provided by the user. Secondly, the regions in the image set are constructed to form an affinity matrix and a novel propagation energy function is defined which takes both low-level visual features and regional significance into consideration. After the iteration, regions in the positive images with high confident scores are selected as the candidate query set to conduct the next-round retrieval task until the retrieval results are satisfactory. Experimental results conducted on both COREL and SFVAL datasets demonstrate the effectiveness of the proposed approach.
机译:由于在CBIR的情况下,用户对图像的一部分感兴趣,而图像的其余部分无关紧要,因此基于内容的本地化图像检索(LCBIR)成为最近的热门话题。在本文中,我们提出了一种新颖的区域级相关性反馈方法来解决LCBIR问题。首先,视觉注意力模型用于测量用户提供的反馈图像集中每个图像的区域显着性。其次,构造图像集中的区域以形成亲和矩阵,并定义了一种新颖的传播能量函数,该函数同时考虑了低层视觉特征和区域重要性。迭代后,选择高置信度得分在正图像中的区域作为候选查询集,以进行下一轮检索任务,直到检索结果令人满意为止。在COREL和SFVAL数据集上进行的实验结果证明了该方法的有效性。

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