Image Annotation with Multiple Quantization

Qiaojin Guo, Ning Li, Yubin Yang, Gangshan Wu
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引用次数: 0

Abstract

Image annotation plays an important role in image retrieval and understanding. Various techniques have been proposed for assigning keywords to images. One of the most frequently used methods is to search annotated images with similar visual features, and keywords are transfered to new coming images. This leads to the problem of nearest neighbor search, which is a hot topic of pattern recognition, information retrieval, and data compression. In this paper we proposed a fast and effective method for retrieving similar images from large collections of annotated images. The proposed technique employs discrete cosine transform and regular lattice quantization to encode images and search similar images directly with the corresponding codes. This technique is evaluated on image annotation. Similar images are retrieved by utilizing our encoding strategy, and keywords are assigned by utilizing traditional label transfer mechanism. Experimental results show that our method provides competitive performance with traditional methods, and mean while provides one scalable framework for annotating large collections of image dataset.
基于多重量化的图像标注
图像标注在图像检索和理解中起着重要的作用。已经提出了为图像分配关键字的各种技术。最常用的方法之一是搜索具有相似视觉特征的注释图像,并将关键字转移到新的图像中。这就产生了最近邻搜索问题,而最近邻搜索是模式识别、信息检索和数据压缩领域的一个热点问题。本文提出了一种快速有效的方法从大量带注释的图像中检索相似图像。该技术采用离散余弦变换和规则点阵量化对图像进行编码,并直接使用相应的代码搜索相似的图像。在图像标注上对该技术进行了评价。利用我们的编码策略检索相似的图像,利用传统的标签转移机制分配关键词。实验结果表明,该方法具有与传统方法相媲美的性能,同时为大型图像数据集的标注提供了一个可扩展的框架。
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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