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Positive Semidefinite Metric Learning with Boosting

机译:具有促进作用的正半定度量学习

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The learning of appropriate distance metrics is a critical problem in image classification and retrieval. In this work, we propose a boosting-based technique, termed BoostMetric, for learning a Mahalanobis distance metric. One of the primary difficulties in learning such a metric is to ensure that the Mahalanobis matrix remains positive semidefinite. Semidefinite programming is sometimes used to enforce this constraint, but does not scale well. BoostMetric is instead based on a key observation that any positive semidefinite matrix can be decomposed into a linear positive combination of trace-one rank-one matrices. BoostMetric thus uses rank-one positive semidefinite matrices as weak learners within an efficient and scalable boosting-based learning process. The resulting method is easy to implement, does not require tuning, and can accommodate various types of constraints. Experiments on various datasets show that the proposed algorithm compares favorably to those state-of-the-art methods in terms of classification accuracy and running time.
机译:适当距离度量的学习是图像分类和检索中的关键问题。在这项工作中,我们提出了一种基于Boosting的技术,称为BoostMetric,用于学习马哈拉诺比斯距离度量。学习这种度量标准的主要困难之一是确保Mahalanobis矩阵保持正半确定性。有时使用半定编程来强制执行此约束,但伸缩性不好。相反,BoostMetric是基于一个关键的观察结果,即任何正半定矩阵都可以分解为跟踪一秩一矩阵的线性正组合。因此,BoostMetric在高效且可扩展的基于Boosting的学习过程中,使用排名第一的正半定矩阵作为弱学习者。生成的方法易于实现,不需要调整,并且可以适应各种类型的约束。在各种数据集上进行的实验表明,该算法在分类准确度和运行时间方面均优于那些最新技术。

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