Deep Learning of Warping Functions for Shape Analysis.

Elvis Nunez, Shantanu H Joshi
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引用次数: 12

Abstract

Rate-invariant or reparameterization-invariant matching between functions and shapes of curves, respectively, is an important problem in computer vision and medical imaging. Often, the computational cost of matching using approaches such as dynamic time warping or dynamic programming is prohibitive for large datasets. Here, we propose a deep neural-network-based approach for learning the warping functions from training data consisting of a large number of optimal matches, and use it to predict optimal diffeomorphic warping functions. Results show prediction performance on a synthetic dataset of bump functions and two-dimensional curves from the ETH-80 dataset as well as a significant reduction in computational cost.

形状分析中翘曲函数的深度学习。
函数和曲线形状之间的速率不变或再参数化不变匹配是计算机视觉和医学成像中的一个重要问题。通常,使用动态时间规整或动态规划等方法进行匹配的计算成本对于大型数据集来说是令人望而却步的。在这里,我们提出了一种基于深度神经网络的方法,从包含大量最优匹配的训练数据中学习翘曲函数,并使用它来预测最优的微分同构翘曲函数。结果表明,基于ETH-80数据集的凹凸函数和二维曲线合成数据集的预测性能良好,并且计算成本显著降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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