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首页> 外文期刊>International Journal on Informatics Visualization: JOIV >Interactive Content Based Image Retrieval using Multiuser Feedback
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Interactive Content Based Image Retrieval using Multiuser Feedback

机译:使用多用户反馈的基于交互式内容的图像检索

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Retrieving images from large databases becomes a difficult task. Content based image retrieval (CBIR) deals with retrieval of images based on their similarities in content (features) between the query image and the target image. But the similarities do not vary equally in all directions of feature space. Further the CBIR efforts have relatively ignored the two distinct characteristics of the CBIR systems: 1) The gap between high level concepts and low level features; 2) Subjectivity of human perception of visual content. Hence an interactive technique called the relevance feedback technique was used. These techniques used user’s feedback about the retrieved images to reformulate the query which retrieves more relevant images during next iterations. But those relevance feedback techniques are called hard relevance feedback techniques as they use only two level user annotation. It was very difficult for the user to give feedback for the retrieved images whether they are relevant to the query image or not. To better capture user’s intention soft relevance feedback technique is proposed. This technique uses multilevel user annotation. But it makes use of only single user feedback. Hence Soft association rule mining technique is also proposed to infer image relevance from the collective feedback. Feedbacks from multiple users are used to retrieve more relevant images improving the performance of the system. Here soft relevance feedback and association rule mining techniques are combined. During first iteration prior association rules about the given query image are retrieved to find out the relevant images and during next iteration the feedbacks are inserted into the database and relevance feedback techniques are activated to retrieve more relevant images. The number of association rules is kept minimum based on redundancy detection.
机译:从大型数据库检索图像成为一项艰巨的任务。基于内容的图像检索(CBIR)基于图像在查询图像和目标图像之间的内容(特征)相似性来处理图像。但是,相似度在要素空间的所有方向上并非均等。此外,CBIR的工作相对地忽略了CBIR系统的两个明显特征:1)高级概念与低级特征之间的差距; 2)人类对视觉内容的感知的主观性。因此,使用了一种称为相关性反馈技术的交互式技术。这些技术利用用户对检索到的图像的反馈来重新构造查询,以在下一次迭代中检索更多相关的图像。但是那些相关性反馈技术被称为硬性相关性反馈技术,因为它们仅使用两级用户注释。用户很难为所检索的图像提供反馈,无论它们是否与查询图像相关。为了更好地捕获用户的意图,提出了软关联反馈技术。此技术使用多级用户注释。但是它仅利用单个用户的反馈。因此,还提出了软关联规则挖掘技术,以从集体反馈中推断图像的相关性。来自多个用户的反馈用于检索更相关的图像,从而改善系统的性能。在这里,将软关联反馈和关联规则挖掘技术结合在一起。在第一次迭代期间,检索有关给定查询图像的先前关联规则以找出相关图像,并且在下一次迭代期间,将反馈插入数据库中,并激活相关性反馈技术以检索更多相关图像。基于冗余检测,关联规则的数量保持最小。

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