面向大规模语义感知图像检索的ObjectBook构建

Shiliang Zhang, Q. Tian, Qingming Huang, Wen Gao
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引用次数: 4

摘要

自动图像标注为图像分配语义标签,为实现语义感知的图像检索提供了巨大的潜力。然而,现有的注释算法在计算效率和它们可以处理的标签数量方面都不能满足这种新出现的需求。在ImageNet等大规模图像分类识别数据发展的推动下,我们由此推断出一种可扩展的图像标注和语义感知图像检索模型,即ObjectBook。ObjectBook中的元素称为ObjectWord,它被定义为带有相应对象注释的判别图像补丁的集合。我们将ObjectBook作为一种高级的语义保持视觉词汇表,因此可以很容易地为大规模图像集合开发高效的图像注释和倒排文件索引策略。将所提出的检索策略与现有算法进行了比较。实验结果表明,ObjectBook具有良好的判别性和可扩展性,可用于大规模的语义感知图像检索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ObjectBook construction for large-scale semantic-aware image retrieval
Automatic image annotation assigns semantic labels to images thus presents great potential to achieve semantic-aware image retrieval. However, existing annotation algorithms are not scalable to this emerging need, both in terms of computational efficiency and the number of tags they can deal with. Facilitated by recent development of the large-scale image category recognition data such as ImageNet, we extrapolate from it a model for scalable image annotation and semantic-aware image retrieval, namely ObjectBook. The element in the ObjectBook, which is called an ObjectWord, is defined as a collection of discriminative image patches annotated with the corresponding objects. We take ObjectBook as a high-level semantic preserving visual vocabulary, and hence are able to easily develop efficient image annotation and inverted file indexing strategies for large-scale image collections. The proposed retrieval strategy is compared with state-of-the-art algorithms. Experimental results manifest that the ObjectBook is both discriminative and scalable for large-scale semantic-aware image retrieval.
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