Sparse similarity matrix learning for visual object retrieval

Zhicheng Yan, Yizhou Yu
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引用次数: 1

Abstract

Tf-idf weighting scheme is adopted by state-of-the-art object retrieval systems to reflect the difference in discriminability between visual words. However, we argue it is only suboptimal by noting that tf-idf weighting scheme does not take quantization error into account and exploit word correlation. We view tf-idf weights as an example of diagonal Mahalanobis-type similarity matrix and generalize it into a sparse one by selectively activating off-diagonal elements. Our goal is to separate similarity of relevant images from that of irrelevant ones by a safe margin. We satisfy such similarity constraints by learning an optimal similarity metric from labeled data. An effective scheme is developed to collect training data with an emphasis on cases where the tf-idf weights violates the relative relevance constraints. Experimental results on benchmark datasets indicate the learnt similarity metric consistently and significantly outperforms the tf-idf weighting scheme.
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稀疏相似矩阵学习用于视觉对象检索
最先进的目标检索系统采用Tf-idf加权方案来反映视觉词之间的区别。然而,我们认为它只是次优的,因为我们注意到tf-idf加权方案没有考虑量化误差和利用词相关性。我们将tf-idf权值作为对角马氏相似矩阵的一个例子,并通过选择性激活非对角元素将其推广为一个稀疏矩阵。我们的目标是在安全范围内将相关图像与不相关图像的相似性分开。我们通过从标记数据中学习最优相似性度量来满足这些相似性约束。开发了一种有效的方案来收集训练数据,重点是在tf-idf权重违反相对相关性约束的情况下。在基准数据集上的实验结果表明,学习到的相似度度量一致且显著优于tf-idf加权方案。
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