On the role of features in human activity recognition

H. Haresamudram, David V. Anderson, T. Plötz
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引用次数: 49

Abstract

Traditionally, the sliding window based activity recognition chain (ARC) has been dominating practical applications, in which features are carefully optimized towards scenario specifics. Recently, end-to-end, deep learning methods, that do not discriminate between representation learning and classifier optimization, have become very popular also for HAR using wearables, promising "out-of-the-box" modeling with superior recognition capabilities. In this paper, we revisit and analyze specifically the role feature representations play in HAR using wearables. In a systematic exploration we evaluate eight different feature extraction methods, including conventional heuristics and recent representation learning methods, and assess their capabilities for effective activity recognition on five benchmarks. Optimized feature learning integrated into the conventional ARC leads to comparable if not better recognition results as if using end-to-end learning methods, while at the same time offering practitioners more flexibility to optimize their systems towards specifics of wearables and their constraints and limitations.
论特征在人体活动识别中的作用
传统上,基于滑动窗口的活动识别链(ARC)在实际应用中占主导地位,其中特征针对场景细节进行仔细优化。最近,端到端的深度学习方法,不区分表示学习和分类器优化,在使用可穿戴设备的HAR中也变得非常流行,承诺具有卓越识别能力的“开箱即用”建模。在本文中,我们重新审视并具体分析了特征表示在使用可穿戴设备的HAR中所起的作用。在系统的探索中,我们评估了八种不同的特征提取方法,包括传统的启发式方法和最近的表示学习方法,并评估了它们在五个基准上有效识别活动的能力。将优化的特征学习集成到传统的ARC中,就像使用端到端学习方法一样,即使没有更好的识别结果,也可以与之媲美,同时为从业者提供了更大的灵活性,可以针对可穿戴设备的具体情况及其约束和局限性来优化他们的系统。
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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