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Toward Robust Distance Metric Analysis for Similarity Estimation

机译:相似度估计的稳健距离度量分析

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In this paper, we present a general guideline to establish the relation between a distribution model and its corresponding similarity estimation. A rich set of distance metrics, such as harmonic distance and geometric distance, is derived according to Maximum Likelihood theory. These metrics can provide a more accurate feature model than the conventional Euclidean distance (SSD) and Manhattan distance (SAD). Because the feature elements are from heterogeneous sources and may have different influence on similarity estimation, the assumption of single isotropic distribution model is often inappropriate. We propose a novel boosted distance metric that not only finds the best distance metric that fits the distribution of the underlying elements but also selects the most important feature elements with respect to similarity. We experiment with different distance metrics for similarity estimation and compute the accuracy of different methods in two applications: stereo matching and motion tracking in video sequences. The boosted distance metric is tested on fifteen benchmark data sets from the UCI repository and two image retrieval applications. In all the experiments, robust results are obtained based on the proposed methods.
机译:在本文中,我们提出了建立分布模型与其对应的相似性估计之间关系的一般指南。根据最大似然理论,可以导出一组丰富的距离度量,例如谐波距离和几何距离。与常规的欧几里得距离(SSD)和曼哈顿距离(SAD)相比,这些度量可以提供更准确的特征模型。由于特征元素来自异类来源,并且可能对相似性估计产生不同的影响,因此单一各向同性分布模型的假设通常是不合适的。我们提出了一种新颖的增强距离度量,该距离度量不仅可以找到适合基础元素分布的最佳距离度量,而且可以针对相似性选择最重要的特征元素。我们使用不同的距离度量进行相似性估计,并在两种应用中计算不同方法的准确性:立体声匹配和视频序列中的运动跟踪。在来自UCI存储库和两个图像检索应用程序的15个基准数据集上测试了增强的距离量度。在所有实验中,均基于所提出的方法获得了可靠的结果。

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