步态协变量因素的增量学习

Zihao Mu, F. M. Castro, M. Marín-Jiménez, Nicolás Guil Mata, Yan-Ran Li, Shiqi Yu
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引用次数: 2

摘要

步态是一种流行的生物识别模式,用于根据人们的行走方式来识别他们。传统上,基于深度学习的步态识别方法是使用整个训练数据集进行训练的。事实上,如果需要包含新的数据(类、视点、行走条件等),就需要用新旧数据样本重新训练模型。在本文中,我们提出了iLGaCo,这是第一个用于步态识别的协变量因素增量学习方法,该方法可以使用新的信息更新深度模型,而无需使用整个数据集从头开始重新训练它。相反,我们的方法使用新数据和以前样本的一小部分执行更短的训练过程。通过这种方式,我们的模型在学习新信息的同时保留了以前的知识。我们对CASIA-B数据集上的iLGaCo进行了两种增量评估:增加新的视点和增加新的行走条件。在这两种情况下,我们的结果都接近经典的“从头开始训练”方法,准确度的边际下降范围在0.2%到1.2%之间,这表明了我们的方法的有效性。此外,将iLGaCo与其他增量学习方法(如LwF和iccarl)进行比较,结果显示准确率有显著提高,根据实验的不同,准确率在6%到15%之间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
iLGaCo: Incremental Learning of Gait Covariate Factors
Gait is a popular biometric pattern used for identifying people based on their way of walking. Traditionally, gait recognition approaches based on deep learning are trained using the whole training dataset. In fact, if new data (classes, view-points, walking conditions, etc.) need to be included, it is necessary to re-train again the model with old and new data samples. In this paper, we propose iLGaCo, the first incremental learning approach of covariate factors for gait recognition, where the deep model can be updated with new information without re-training it from scratch by using the whole dataset. Instead, our approach performs a shorter training process with the new data and a small subset of previous samples. This way, our model learns new information while retaining previous knowledge. We evaluate iLGaCo on CASIA-B dataset in two incremental ways: adding new view-points and adding new walking conditions. In both cases, our results are close to the classical ‘training-from-scratch’ approach, obtaining a marginal drop in accuracy ranging from 0.2% to 1.2%, what shows the efficacy of our approach. In addition, the comparison of iLGaCo with other incremental learning methods, such as LwF and iCarl, shows a significant improvement in accuracy, between 6% and 15% depending on the experiment.
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