Exploring semi-supervised and active learning for activity recognition

Maja Stikic, Kristof Van Laerhoven, B. Schiele
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引用次数: 205

Abstract

In recent years research on human activity recognition using wearable sensors has enabled to achieve impressive results on real-world data. However, the most successful activity recognition algorithms require substantial amounts of labeled training data. The generation of this data is not only tedious and error prone but also limits the applicability and scalability of today's approaches. This paper explores and systematically analyzes two different techniques to significantly reduce the required amount of labeled training data. The first technique is based on semi-supervised learning and uses self-training and co-training. The second technique is inspired by active learning. In this approach the system actively asks which data the user should label. With both techniques, the required amount of training data can be reduced significantly while obtaining similar and sometimes even better performance than standard supervised techniques. The experiments are conducted using one of the largest and richest currently available datasets.
探索半监督和主动学习的活动识别
近年来,使用可穿戴传感器进行人体活动识别的研究已经在现实世界的数据上取得了令人印象深刻的成果。然而,最成功的活动识别算法需要大量的标记训练数据。这种数据的生成不仅繁琐且容易出错,而且还限制了当今方法的适用性和可扩展性。本文探索并系统地分析了两种不同的技术,以显著减少标记训练数据所需的数量。第一种技术基于半监督学习,使用自我训练和共同训练。第二个技巧是受到主动学习的启发。在这种方法中,系统主动询问用户应该标记哪些数据。使用这两种技术,所需的训练数据量可以显着减少,同时获得与标准监督技术相似甚至有时更好的性能。实验是使用目前可用的最大和最丰富的数据集之一进行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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