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DNN-Buddies: A Deep Neural Network-Based Estimation Metric for the Jigsaw Puzzle Problem

机译:DNN-Buddies:拼图问题的基于深度神经网络的估计度量

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This paper introduces the first deep neural network-based estimation metric for the jigsaw puzzle problem. Given two puzzle piece edges, the neural network predicts whether or not they should be adjacent in the correct assembly of the puzzle, using nothing but the pixels of each piece. The proposed metric exhibits an extremely high precision even though no manual feature extraction is performed. When incorporated into an existing puzzle solver, the solution's accuracy increases significantly, achieving thereby a new state-of-the-art standard.
机译:本文介绍了拼图拼图问题的第一个深度神经网络的估计度量。给定两个拼图件边缘,神经网络预测它们是否应该在拼图的正确组装中相邻,除了每个部件的像素。即使没有进行手动特征提取,所提出的度量也表现出极高的精度。当结合到现有拼图求解器中时,溶液的精度显着增加,从而实现了新的最先进标准。

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