提高基于内容的图像检索系统精度的一种有效的软多重赋值策略

Zied Elleuch, K. Marzouki
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引用次数: 0

摘要

多重赋值方法减轻了量化误差,提高了基于内容的图像检索系统的精度。它旨在将每个特征向量硬分配给k个最近的视觉词。然而,在匹配步骤中,k最近的视觉词是独立使用的,忽略了最佳视觉词的显著性。本文提出了一种集成了汉明嵌入、软赋值、多重赋值和图融合等方法的CBIR系统。我们特别关注多重作业策略。我们提出了一种有效的软多重分配策略来突出最接近k的视觉词。为此,我们探索了SOM拓扑,并证明了它在这方面的性能。此外,我们采用图融合的方法来融合多特征排序表。在Holiday和Ukbench公共数据集上进行了广泛的实验。实验结果很有希望,并且优于目前最先进的CBIR系统。事实上,我们在Holidays数据集上的mAP = 85.6,在Ukbench数据集上的KS得分为3.87。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Effective Soft Multiple-Assignments Strategies for Enhancing the Accuracy of the Content-Based Image Retrieval Systems
The multiple-assignments approach alleviates the quantization error and enhances the accuracy of the Content-Based Image Retrieval (CBIR) systems. It aims to hard assign each feature vector to k-nearest visual words. However, during the matching step, the k-nearest visual words are used independently and ignore the significant of the best visual word. In this paper, we present our CBIR system which encapsulates several approaches such Hamming embedding, soft-assignment, multiple-assignments and graph fusion. We particularly focus on the multiple-assignments strategy. We propose an efficient soft multiple-assignments strategy to highlight the best k-nearest visual word. To this end, we explore the SOM topology which proved its performance in so doing. Moreover, we use graph fusion approach to fuse multi-features ranking lists. Extensive experiments are conducted on Holiday and Ukbench public datasets. The experimental results are promising and outperform the state-of-the-art CBIR systems. In fact, we have reached a mAP = 85.6 on Holidays dataset and a KS score of 3.87 on Ukbench dataset.
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