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Joint Metric Learning on Riemannian Manifold of Global Gaussian Distributions

机译:全球高斯分布的黎曼流形的联合度量学习

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In many computer vision tasks, images or image sets can be modeled as a Gaussian distribution to capture the underlying data distribution. The challenge of using Gaussians to model the vision data is that the space of Gaussians is not a linear space. From the perspective of information geometry, the Gaussians lie on a specific Riemannian Manifold. In this paper, we present a joint metric learning (JML) model on Riemannian Manifold of Gaussian distributions. The distance between two Gaussians is defined as the sum of the Mahalanobis distance between the mean vectors and the log-Euclidean distance (LED) between the covariance matrices. We formulate the multi-metric learning model by jointly learning the Mahalanobis distance and the log-Euclidean distance with pairwise constraints. Sample pair weights are embedded to select the most informative pairs to learn the discriminative distance metric. Experiments on video based face recognition, object recognition and material classification show that JML is superior to the state-of-the-art metric learning algorithms for Gaussians.
机译:在许多计算机视觉任务中,可以将图像或图像集建模为高斯分布,以捕获基础数据分布。使用高斯模型对视觉数据建模的挑战在于,高斯空间不是线性空间。从信息几何学的角度来看,高斯人位于特定的黎曼流形上。在本文中,我们提出了基于高斯分布的黎曼流形的联合度量学习(JML)模型。两个高斯之间的距离定义为均值向量之间的马氏距离与协方差矩阵之间的对数欧几里得距离(LED)之和。我们通过联合学习具有成对约束的马氏距离和对数-欧几里得距离来制定多指标学习模型。嵌入样本对权重以选择信息最丰富的对,以学习判别性距离度量。基于视频的面部识别,对象识别和材料分类的实验表明,JML优于高斯人最新的度量学习算法。

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