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Hamming Distance Metric Learning

机译:海明距离度量学习

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摘要

Motivated by large-scale multimedia applications we propose to learn mappings from high-dimensional data to binary codes that preserve semantic similarity. Binary codes are well suited to large-scale applications as they are storage efficient and permit exact sub-linear kNN search. The framework is applicable to broad families of mappings, and uses a flexible form of triplet ranking loss. We overcome discontinuous optimization of the discrete mappings by minimizing a piecewise-smooth upper bound on empirical loss, inspired by latent structural SVMs. We develop a new loss-augmented inference algorithm that is quadratic in the code length. We show strong retrieval performance on CIFAR-10 and MNIST, with promising classification results using no more than kNN on the binary codes.
机译:受大型多媒体应用程序的启发,我们建议学习从高维数据到保留语义相似性的二进制代码的映射。二进制代码存储效率高,并允许精确的亚线性kNN搜索,因此非常适合大规模应用。该框架适用于广泛的映射系列,并使用灵活的三联体排名损失形式。通过最小化由潜在结构SVM引起的经验损失的分段平滑上限,我们克服了离散映射的不连续优化问题。我们开发了一种新的损失增强推理算法,该算法的代码长度为平方。我们在CIFAR-10和MNIST上显示出强大的检索性能,在二进制代码上使用不超过kNN的分类结果很有希望。

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