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Affine Invariant Dynamic Time Warping and its Application to Online Rotated Handwriting Recognition

机译:仿射不变动态时间翘曲及其在线旋转手写识别的应用

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Dynamic Time Warping (DTW) has been widely used to align and compare two sequences. DTW can efficiently deal with local warp or deformation between sequences. However, it can't take account of affine transformation of sequences, such as rotation, shift and scale. This paper introduces a novel Affine Invariant Dynamic Time Warping (AI-DTW) method, which tries to deal with the affine transformation and sequence alignment in a unified framework. We propose an iterative algorithm to estimate the optimal transformation matrix and warping path by mutually updating them. Recognition experiments on the online rotated handwritten data illustrated that the AI-DTW achieves a recognition rate of 95.54%, which is significantly higher than that (65.87%) of the classical DTW method.
机译:动态时间翘曲(DTW)已被广泛用于对齐和比较两个序列。 DTW可以有效地处理序列之间的当地经纱或变形。但是,它不能考虑序列的仿射变换,例如旋转,换档和比例。本文介绍了一种新型仿射不变动态时间翘曲(AI-DTW)方法,该方法试图处理统一框架中的仿射变换和序列对齐。我们提出了一种迭代算法来估算通过相互更新的估计最佳变换矩阵和翘曲路径。在线旋转的手写数据上的识别实验说明了AI-DTW实现了95.54%的识别率,显着高于经典DTW方法的(65.87%)。

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