Color co-occurrence descriptors for querying-by-example

V. Kovalev, Stephan Volmer
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引用次数: 91

Abstract

Multimedia documents are different from traditional text documents, because they may contain encodings of raw sensorical data. This fact has severe consequences for the efficient indexing and retrieval of information from documents in large unstructured collections (e.g. WWW), because it is very difficult to automatically identify generic meanings from visual or audible objects. A novel method for image retrieval from large collections is proposed in this paper. The method is based on color co-occurrence descriptors that utilize compact representations of essential information of the visual image content. The set of descriptor elements represents "elementary" color segments, their borders, and their mutual spatial distribution on the image frame. Such representation is flexible enough to describe image scenes ranging from simple combinations of color segments to high frequency color textures equally well. At the retrieval stage the comparison between a given query descriptor and the database descriptors is performed by a similarity measure. Image descriptors are robust versus affine transformations and several other image distortions. The consideration of the descriptors as sets of elements allows the combination of several images or subimages into a single query. Basic properties of the method are demonstrated experimentally on an image database containing 20000 images.
用于按例查询的颜色共现描述符
多媒体文档不同于传统的文本文档,因为它们可能包含原始感官数据的编码。这一事实对于从大型非结构化集合(例如WWW)中的文档中有效地索引和检索信息具有严重的后果,因为很难从视觉或听觉对象中自动识别通用含义。提出了一种从大型图像集合中检索图像的新方法。该方法基于颜色共现描述符,该描述符利用视觉图像内容的基本信息的紧凑表示。描述符元素的集合表示“基本”颜色段、它们的边界以及它们在图像帧上的相互空间分布。这种表示足够灵活,可以很好地描述从简单的颜色段组合到高频颜色纹理的图像场景。在检索阶段,通过相似性度量执行给定查询描述符和数据库描述符之间的比较。图像描述符对仿射变换和其他几种图像畸变具有鲁棒性。将描述符考虑为元素集,可以将多个图像或子图像组合到单个查询中。在包含20000张图像的图像数据库上实验验证了该方法的基本特性。
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