越少越好:通过共享结构发现的半监督活动识别

Lina Yao, F. Nie, Quan Z. Sheng, Tao Gu, Xue Li, Sen Wang
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引用次数: 58

摘要

尽管人类活动识别在过去几十年里得到了积极的研究和发展,但现有的技术仍然存在一些局限性,特别是由于缺乏真实数据和对活动的类内可变性的支持而导致的性能差(即,相同的活动可能由不同的个体以不同的方式进行,甚至由不同时间框架的同一个体进行)。为了解决这两个问题,本文提出了一种鲁棒的活动识别方法,通过从活动中提取固有的共享结构来处理类内可变性,并且该方法通过同时利用从标记和容易获得的未标记数据中学习到的相关性嵌入到半监督学习框架中。我们在损失函数和正则化上使用l2,1最小化来有效地抵抗噪声传感器数据中的异常值,并通过从活动中识别潜在的共性来提高识别精度。在四个社区贡献的公共数据集上进行的大量实验评估表明,在训练样本较少的情况下,我们提出的方法优于一组经典的监督学习方法以及最近提出的半监督学习方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning from less for better: semi-supervised activity recognition via shared structure discovery
Despite the active research into, and the development of, human activity recognition over the decades, existing techniques still have several limitations, in particular, poor performance due to insufficient ground-truth data and little support of intra-class variability of activities (i.e., the same activity may be performed in different ways by different individuals, or even by the same individuals with different time frames). Aiming to tackle these two issues, in this paper, we present a robust activity recognition approach by extracting the intrinsic shared structures from activities to handle intra-class variability, and the approach is embedded into a semi-supervised learning framework by utilizing the learned correlations from both labeled and easily-obtained unlabeled data simultaneously. We use l2,1 minimization on both loss function and regularizations to effectively resist outliers in noisy sensor data and improve recognition accuracy by discerning underlying commonalities from activities. Extensive experimental evaluations on four community-contributed public datasets indicate that with little training samples, our proposed approach outperforms a set of classical supervised learning methods as well as those recently proposed semi-supervised approaches.
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