DTWNet: a Dynamic Time Warping Network

Cai, Xingyu, Xu, Tingyang, Yi, Jinfeng, Huang, Junzhou, Rajasekaran, Sanguthevar

Neural Information Processing Systems 

Dynamic Time Warping (DTW) is widely used as a similarity measure in various domains. Due to its invariance against warping in the time axis, DTW provides more meaningful discrepancy measurements between two signals than other dis- tance measures. In this paper, we propose a novel component in an artificial neural network. In contrast to the previous successful usage of DTW as a loss function, the proposed framework leverages DTW to obtain a better feature extraction. For the first time, the DTW loss is theoretically analyzed, and a stochastic backpropogation scheme is proposed to improve the accuracy and efficiency of the DTW learning.