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Deep Learning of Graph Matching

机译:图匹配的深度学习

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摘要

The problem of graph matching under node and pairwise constraints is fundamental in areas as diverse as combinatorial optimization, machine learning or computer vision, where representing both the relations between nodes and their neighborhood structure is essential. We present an end-to-end model that makes it possible to learn all parameters of the graph matching process, including the unary and pairwise node neighborhoods, represented as deep feature extraction hierarchies. The challenge is in the formulation of the different matrix computation layers of the model in a way that enables the consistent, efficient propagation of gradients in the complete pipeline from the loss function, through the combinatorial optimization layer solving the matching problem, and the feature extraction hierarchy. Our computer vision experiments and ablation studies on challenging datasets like PASCAL VOC keypoints, Sintel and CUB show that matching models refined end-to-end are superior to counterparts based on feature hierarchies trained for other problems.
机译:在节点优化和机器学习或计算机视觉等各种领域中,节点和成对约束下的图匹配问题是至关重要的,在这些领域中,代表节点及其邻域结构之间的关系至关重要。我们提出了一种端到端模型,该模型使学习图匹配过程的所有参数成为可能,包括一元和成对节点邻域,这些参数表示为深特征提取层次结构。挑战在于以一种方式来制定模型的不同矩阵计算层,该方式使得从损失函数到解决匹配问题的组合优化层以及特征提取,能够在整个管道中一致,高效地传播梯度。层次结构。我们对具有挑战性的数据集(例如PASCAL VOC关键点,Sintel和CUB)的计算机视觉实验和消融研究表明,端到端精炼的匹配模型优于针对其他问题而训练的特征层次结构的匹配模型。

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