Incorporating real-valued multiple instance learning into relevance feedback for image retrieval

Xin Huang, Shu‐Ching Chen, M. Shyu
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引用次数: 12

Abstract

This paper presents a content-based image retrieval (CBIR) system that incorporates real-valued multiple instance learning (MIL) into the user relevance feedback (RF) to learn the user's subjective visual concepts, especially where the user's most interested region and how to map the local feature vector of that region to the high-level concept pattern of the user. RF provides a way to obtain the subjectivity of the user's high-level visual concepts, and MIL enables the automatic learning of the user's high-level concepts. The user interacts with the CBIR system by relevance feedback in a way that the extent to which the image samples retrieved by the system are relevant to the user's intention is labeled. The system in turn applies the MIL method to find user's most interested image region from the feedback. A multilayer neural network that is trained progressively through the feedback and learning procedure is used to map the low-level image features to the high-level concepts.
将实值多实例学习与相关反馈相结合用于图像检索
本文提出了一种基于内容的图像检索(CBIR)系统,该系统将实值多实例学习(MIL)与用户相关反馈(RF)相结合,学习用户的主观视觉概念,特别是用户最感兴趣的区域,以及如何将该区域的局部特征向量映射到用户的高级概念模式。RF提供了一种获取用户高级视觉概念主观性的方法,MIL实现了对用户高级概念的自动学习。用户通过相关反馈与CBIR系统交互,系统检索的图像样本与用户意图相关的程度被标记。然后,系统应用MIL方法从反馈中找到用户最感兴趣的图像区域。通过反馈和学习过程逐步训练多层神经网络,将低级图像特征映射到高级概念。
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