Association-based image retrieval

Arun D. Kulkarni, Leonard Brown
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引用次数: 14

Abstract

With advances in the computer technology and the World Wide Web there has been an explosion in the amount and complexity of multimedia data that are generated, stored, transmitted, analyzed, and accessed. In order to extract useful information from this huge amount of data, many content-based image retrieval (CBIR) systems have been developed in the last decade. A typical CBIR system captures image features that represent image properties such as color, texture, or shape of objects in the query image and try to retrieve images from the database with similar features. Recent advances in CBIR systems include relevance feedback based interactive systems. The main advantage of CBIR systems with relevance feedback is that these systems take into account the gap between the high-level concepts and low-level features and subjectivity of human perception of visual content. In this paper, we propose a new approach for image storage and retrieval called association-based image retrieval (ABIR). We try to mimic human memory. The human brain stores and retrieves images by association. We use a generalized bi-directional associative memory (GBAM) to store associations between feature vectors.
基于关联的图像检索
随着计算机技术和万维网的发展,生成、存储、传输、分析和访问的多媒体数据的数量和复杂性呈爆炸式增长。为了从海量的数据中提取有用的信息,在过去的十年中,许多基于内容的图像检索(CBIR)系统被开发出来。典型的CBIR系统捕获表示查询图像中对象的颜色、纹理或形状等图像属性的图像特征,并尝试从数据库中检索具有类似特征的图像。CBIR系统的最新进展包括基于相关反馈的交互式系统。具有相关性反馈的CBIR系统的主要优点是,这些系统考虑了高级概念与低级特征之间的差距以及人类对视觉内容感知的主观性。本文提出了一种新的图像存储和检索方法,称为基于关联的图像检索(ABIR)。我们试图模仿人类的记忆。人脑通过联想来存储和检索图像。我们使用广义双向联想记忆(GBAM)来存储特征向量之间的关联。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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