While Semi-supervised learning has gained much attention in computer vision on image data, yet limited research exists on its applicability in the time series domain. In this work, we investigate the transferability of state-of-the-art deep semi-supervised models from image to time series classification. We discuss the necessary model adaptations, in particular an appropriate model backbone architecture and the use of tailored data augmentation strategies. Based on these adaptations, we explore the potential of deep semi-supervised learning in the context of time series classification by evaluating our methods on large public time series classification problems with varying amounts of labelled samples. We perform extensive comparisons under a decidedly realistic and appropriate evaluation scheme with a unified reimplementation of all algorithms considered, which is yet lacking in the field. We find that these transferred semi-supervised models show significant performance gains over strong supervised, semi-supervised and self-supervised alternatives, especially for scenarios with very few labelled samples.
翻译:虽然半监督的学习在图像数据的计算机视野中引起了对图像数据的注意,但对其在时间序列领域的适用性的研究有限。 在这项工作中,我们调查了从图像序列分类到时间序列分类的最先进的深半监督模型的可转让性。我们讨论了必要的模型调整,特别是适当的模型主干结构和使用量身定制的数据增强战略。根据这些调整,我们通过评价我们对于大量贴标签样本的大型公共时间序列分类问题的方法,探索了在时间序列分类方面进行深半监督的学习的潜力。我们根据一个确定现实和适当的评估计划进行了广泛的比较,并统一地重新采用所有考虑的算法,而在实地还缺乏这种算法。我们发现,这些半监督的模型显示了在强有力的监管、半监督和自我监督的替代方法方面所取得的重大绩效收益,特别是在极少有标签样本的情况下。