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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Combining intra-image and inter-class semantics for consumer image retrieval
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Combining intra-image and inter-class semantics for consumer image retrieval

机译:结合图像内和类间语义进行消费者图像检索

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摘要

Unconstrained consumer photos pose great challenge for content-based image retrieval. Unlike professional images or domain-specific images, consumer photos vary significantly. More often than not, the objects in the photos are ill-posed, occluded, and cluttered with poor lighting, focus and exposure. In this paper, we propose a cascading framework for combining intra-image and inter-class similarities in image retrieval, motivated from probabilistic Bayesian principles. Support vector machines are employed to learn local view-based semantics based on just-in-time fusion of color and texture features. A new detection-driven block-based segmentation algorithm is designed to extract semantic features from images. The detection-based indexes also serve as input for support vector learning of image classifiers to generate class-relative indexes. During image retrieval, both intra-image and inter-class similarities are combined to rank images. Experiments using query-by-example on 2400 genuine heterogeneous consumer photos with 16 semantic queries show that the combined matching approach is better than matching with single index. It also outperformed the method of combining color and texture features by 55 % in average precision. (c) 2004 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:不受约束的消费者照片对基于内容的图像检索提出了巨大挑战。与专业图像或特定于域的图像不同,消费者照片差异很大。照片中的对象经常会因光线,焦点和曝光不良而摆放不佳,被遮挡和混乱。在本文中,我们基于概率贝叶斯原理提出了一种在图像检索中结合图像内和类间相似性的级联框架。支持向量机用于基于颜色和纹理特征的即时融合来学习基于局部视图的语义。设计了一种新的基于检测的基于块的分割算法,以从图像中提取语义特征。基于检测的索引还用作图像分类器的支持向量学习的输入,以生成相对类别的索引。在图像检索期间,图像内相似性和类间相似性都被组合以对图像进行排名。对2400张具有16个语义查询的正版异类消费者照片进行示例查询的实验表明,组合匹配方法比单索引匹配更好。在平均精度方面,它也比将颜色和纹理特征组合的方法要好55%。 (c)2004模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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