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Semi-supervised discriminative common vector method for computer vision applications

机译:用于计算机视觉应用的半监督判别通用矢量方法

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摘要

We introduce a new algorithm for distance metric learning which uses pairwise similarity (equivalence) and dissimilarity constraints. The method is adapted to the high-dimensional feature spaces that occur in many computer vision applications. It first projects the data onto the subspace orthogonal to the linear span of the difference vectors of similar sample pairs. Similar samples thus have identical projections, i.e., the distance between the two elements of each similar sample pair becomes zero in the projected space. In the projected space we find a linear embedding that maximizes the scatter of the dissimilar sample pairs. This corresponds to a pseudo-metric characterized by a positive semi-definite matrix in the original input space. We also kernelize the method and show that this allows it to handle cases with low-dimensional input spaces and large numbers of similarity constraints. Despite the method's simplicity, experiments on synthetic problems and on real-world image retrieval, visual object classification, gender classification and image segmentation ones demonstrate its effectiveness, yielding significant improvements over the existing distance metric learning methods.
机译:我们介绍了一种新的距离度量学习算法,该算法使用成对相似性(对等)和不相似性约束。该方法适用于许多计算机视觉应用程序中出现的高维特征空间。它首先将数据投影到与相似样本对的差分向量的线性跨度正交的子空间上。因此,相似样本具有相同的投影,即每个相似样本对的两个元素之间的距离在投影空间中变为零。在投影空间中,我们找到了线性嵌入,可最大程度地提高不同样本对的散布。这对应于以原始输入空间中的正半定矩阵为特征的伪度量。我们还对该方法进行了内核化,并表明它可以处理具有低维输入空间和大量相似性约束的情况。尽管该方法简单易行,但在合成问题以及现实世界中的图像检索,视觉对象分类,性别分类和图像分割等方面的实验证明了其有效性,与现有的距离度量学习方法相比,有了很大的改进。

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