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Perceived Similarity and Visual Descriptions in Content-Based Image Retrieval

机译:基于内容的图像检索中的感知相似性和视觉描述

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The use of low-level feature descriptors is pervasive in content-based image retrieval tasks and the answer to the question of how well these features describe users' intention is inconclusive. In this paper we devise experiments to gauge the degree of alignment between the description of target images by humans and that implicitly provided by low-level image feature descriptors. Data was collected on how humans perceive similarity in images. Using images judged by humans to be similar, as ground truth, the performance of some MPEG-7 visual feature descriptors were evaluated. It is found that various descriptors play different roles in different queries and their appropriate combination can improve the performance of retrieval tasks. This forms a basis for the development of adaptive weight assignment to features depending on the query and retrieval task.
机译:使用低级特征描述符在基于内容的图像检索任务中普遍存在,以及这些功能如何描述用户意图的问题的答案是不确定的。在本文中,我们设计了实验来衡量人类的目标图像描述之间的对准程度,并且由低级图像特征描述符隐式提供。数据被收集了人类如何感知图像中的相似性。使用人类判断的图像与地面真理相似,评估了一些MPEG-7视觉特征描述符的性能。结果发现,各种描述符在不同的查询中发挥不同的角色,并且它们适当的组合可以提高检索任务的性能。这构成了根据查询和检索任务开发自适应权重分配的基础。

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