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A Framework Toward Restoration of Writing Order from Single-Stroked Handwriting Image

机译:从单笔触笔迹图像恢复书写顺序的框架

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Restoration of writing order from a single-stroked handwriting image can be seen as the problem of finding the smoothest path in its graph representation. In this paper, a 3-phase approach to restore a writing order is proposed within the framework of the edge continuity relation (ECR). In the initial, local phase, in order to obtain possible ECRs at an even-degree node, a neural network is used for the node of degree 4 and a theoretical approach is presented for the node of degree higher than 4 by introducing certain reasonable assumptions. In the second phase, we identify double-traced lines by employing maximum weighted matching. This makes it possible to transform the problem of obtaining possible ECRs at odd-degree node to that at even-degree node. In the final, global phase, we find all the candidates of single-stroked paths by depth first search and select the best one by evaluating SLALOM smoothness. Experiments on static images converted from online data in the Unipen database show that our method achieves a restoration rate of 96.0 percent
机译:从单笔迹手写图像中恢复书写顺序可以看作是在其图形表示中找到最平滑路径的问题。在本文中,提出了一种在边缘连续性关系(ECR)框架内恢复书写顺序的3相方法。在初始局部阶段,为了在偶数度节点上获得可能的ECR,将神经网络用于4度节点,并通过引入某些合理的假设为4度以上节点提供理论方法。在第二阶段,我们通过使用最大加权匹配来识别双迹线。这使得将在奇数节点处获得可能的ECR的问题转换为在偶数节点处获得可能的ECR的问题成为可能。在最后的全局阶段,我们通过深度优先搜索找到所有单笔路径的候选对象,并通过评估SLALOM平滑度选择最佳路径。对从Unipen数据库中的在线数据转换而来的静态图像进行的实验表明,我们的方法实现了96.0%的恢复率

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