A novel method for multiple-query image retrieval

M. Taghizadeh, A. Chalechale
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引用次数: 2

Abstract

Multiple-query image retrieval is usually utilized in order to enhance performance of the image retrieval system with considering single semantic for a query set. So far, multiple-query image retrieval based on different queries has rarely studied. In this work, we intend to address this problem using a binary component vector. This vector indicates distinct components which exist in an image. The binary component vector is also generated utilizing low-level feature extraction techniques. The final image retrieval process is performed based on this vector. The experimental results show a better performance and less computation in contrary to previous proposed methods.
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一种新的多查询图像检索方法
为了提高图像检索系统的性能,通常采用多查询图像检索,同时考虑查询集的单一语义。到目前为止,基于不同查询的多查询图像检索的研究还很少。在这项工作中,我们打算使用二进制分量向量来解决这个问题。这个向量表示图像中存在的不同分量。利用低级特征提取技术生成二元分量向量。最终的图像检索过程是基于这个向量执行的。实验结果表明,该方法比以往提出的方法性能更好,计算量更少。
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