Deep time series metric learning is challenging due to the difficult trade-off between temporal invariance to nonlinear distortion and discriminative power in identifying non-matching sequences. This paper proposes a novel neural network-based approach for robust yet discriminative time series classification and verification. This approach adapts a parameterized attention model to time warping for greater and more adaptive temporal invariance. It is robust against not only local but also large global distortions, so that even matching pairs that do not satisfy the monotonicity, continuity, and boundary conditions can still be successfully identified. Learning of this model is further guided by dynamic time warping to impose temporal constraints for stabilized training and higher discriminative power. It can learn to augment the inter-class variation through warping, so that similar but different classes can be effectively distinguished. We experimentally demonstrate the superiority of the proposed approach over previous non-parametric and deep models by combining it with a deep online signature verification framework, after confirming its promising behavior in single-letter handwriting classification on the Unipen dataset.
翻译:深时间序列衡量学习之所以具有挑战性,是因为在确定非对称序列时,时间差与非线性扭曲和歧视性力量之间难以权衡取舍。 本文提出一种新的神经网络法, 以稳健但有区别的时间序列分类和核实为主。 这种方法将参数化关注模式适应时间扭曲的模式, 以争取更大和更具适应性的时间差异。 它不仅针对局部,而且针对巨大的全球扭曲,因此甚至连不满足单词性、连续性和边界条件的对配对都能够成功地找到。 动态时间变换进一步指导了这一模式的学习, 给稳定的培训和更高有区别性的力量规定了时间限制。 它可以通过扭曲来学习如何增加阶级之间的差异, 以便有效地区分相似但不同的类别。 我们实验性地展示了拟议方法优于先前的非参数和深度模型的优越性, 在Unipen数据集的单字母笔迹分类中确认了其有希望的行为。