Keypoint Reduction for Smart Image Retrieval

K. Yuasa, T. Wada
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引用次数: 4

Abstract

Content-based image retrieval (CBIR) is an image retrieval problem with image-content query. This problem is investigated in many applications, such as, human identification, information embedding to real-world objects, life-log, and so on. Through many researches on CBIR, local image features, such as SIFT, SURF, and LBP, defined on image key points are proved to be effective for fast and occlusion-robust image retrieval. In CBIR using local features, it is clear that not all features are necessary for image retrieval. That is, distinctive features have stronger discrimination power than commonly observed features. Also, some local features are fragile against observation distortions. This paper presents an importance measure representing both the robustness and the distinctiveness of a local feature based on diverse density. According to this measure, we can reduce the number of local features related to each database entry. Through some experiments, database having reduced local feature indices performs better than database using all local features as indices.
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智能图像检索的关键点缩减
基于内容的图像检索(CBIR)是一种基于图像内容查询的图像检索问题。这一问题在许多应用中都得到了研究,如人体识别、信息嵌入到现实世界的物体、生命日志等。通过对CBIR的大量研究,证明了在图像关键点上定义的SIFT、SURF、LBP等局部图像特征对于快速、抗遮挡的图像检索是有效的。在使用局部特征的CBIR中,显然并非所有特征都是图像检索所必需的。也就是说,显著特征比常见特征具有更强的辨别能力。此外,一些局部特征在观测失真的影响下是脆弱的。本文提出了一种基于不同密度的局部特征鲁棒性和显著性的重要度量。根据这种方法,我们可以减少与每个数据库条目相关的局部特征的数量。通过一些实验,减少局部特征索引的数据库比使用所有局部特征作为索引的数据库性能更好。
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