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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Graph-based classification of multiple observation sets
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Graph-based classification of multiple observation sets

机译:基于图的多个观测集分类

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摘要

We consider the problem of classification of an object given multiple observations that possibly include different transformations. The possible transformations of the object generally span a low-dimensional manifold in the original signal space. We propose to take advantage of this manifold structure for the effective classification of the object represented by the observation set. In particular, we design a low complexity solution that is able to exploit the properties of the data manifolds with a graph-based algorithm. Hence, we formulate the computation of the unknown label matrix as a smoothing process on the manifold under the constraint that all observations represent an object of one single class. It results into a discrete optimization problem, which can be solved by an efficient and simple, yet effective, algorithm. We demonstrate the performance of the proposed graph-based algorithm in the classification of sets of multiple images. Moreover, we show its high potential in video-based face recognition, where it outperforms state-of-the-art solutions that fall short of exploiting the manifold structure of the face image data sets. 2010 Elsevier Ltd. All rights reserved.
机译:考虑到可能包含不同变换的多个观察,我们考虑对象的分类问题。对象的可能变换通常跨越原始信号空间中的低维流形。我们建议利用这种流形结构来对观察集表示的对象进行有效分类。特别是,我们设计了一种低复杂度的解决方案,该解决方案能够通过基于图的算法来利用数据流形的属性。因此,我们将未知标签矩阵的计算公式化为在所有观测值都代表一个单一类别的对象的约束下,在流形上进行的平滑处理。这导致了一个离散的优化问题,可以通过一种有效,简单但有效的算法来解决。我们证明了基于图的算法在多图像集分类中的性能。此外,我们展示了其在基于视频的面部识别中的巨大潜力,在此方面,它的表现优于最先进的解决方案,而这些解决方案未能充分利用面部图像数据集的多种结构。 2010 Elsevier Ltd.保留所有权利。

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