Joint Classification and Trajectory Regression of Online Handwriting using a Multi-Task Learning Approach

Felix Ott, David Rügamer, Lucas Heublein, Bernd Bischl, Christopher Mutschler
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引用次数: 12

Abstract

Multivariate Time Series (MTS) classification is important in various applications such as signature verification, person identification, and motion recognition. In deep learning these classification tasks are usually learned using the cross-entropy loss. A related yet different task is predicting trajectories observed as MTS. Important use cases include handwriting reconstruction, shape analysis, and human pose estimation. The goal is to align an arbitrary dimensional time series with its ground truth as accurately as possible while reducing the error in the prediction with a distance loss and the variance with a similarity loss. Although learning both losses with Multi-Task Learning (MTL) helps to improve trajectory alignment, learning often remains difficult as both tasks are contradictory. We propose a novel neural network architecture for MTL that notably improves the MTS classification and trajectory regression performance in online handwriting (OnHW) recognition. We achieve this by jointly learning the cross-entropy loss in combination with distance and similarity losses. On an OnHW task of handwritten characters with multivariate inertial and visual data inputs we are able to achieve crucial improvements (lower error with less variance) of trajectory prediction while still improving the character classification accuracy in comparison to models trained on the individual tasks.
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基于多任务学习方法的在线手写联合分类与轨迹回归
多变量时间序列(MTS)分类在签名验证、人物识别和运动识别等各种应用中都很重要。在深度学习中,这些分类任务通常使用交叉熵损失来学习。一个相关但不同的任务是预测MTS观察到的轨迹,重要的用例包括手写重建、形状分析和人体姿势估计。目标是尽可能准确地对齐任意维度的时间序列,同时减少距离损失的预测误差和相似损失的方差。尽管使用多任务学习(MTL)学习两种损失有助于改善轨迹对齐,但由于两种任务是相互矛盾的,学习往往仍然困难。我们提出了一种新的MTL神经网络架构,显著提高了MTS分类和轨迹回归在在线手写识别中的性能。我们通过结合距离和相似损失共同学习交叉熵损失来实现这一目标。在具有多变量惯性和视觉数据输入的手写字符的OnHW任务中,我们能够在轨迹预测方面取得关键的改进(更低的误差和更少的方差),同时与在单个任务上训练的模型相比,仍然提高了字符分类精度。
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