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A C-LSTM Neural Network for Human Activity Recognition Using Wearables

机译:用于使用可穿戴物的人类活动识别的C-LSTM神经网络

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Recognizing human activities and the context in which they occur form sensor data is at the core of many research areas in pervasive computing and has extensive applications in solving real-life, human-centric problems. However, human activity recognition (HAR) is challenging due to the large variability in motor movements employed for a given action. By the way of enhancing recognition accuracy and decreasing reliance on engineered features to address increasingly complex recognition problems we introduce a new framework for wearable human activity recognition which combines convolutional and recurrent layers. The convolutional layers act as feature extractors and provide abstract representations of the input sensor data in feature maps. The recurrent layers model the temporal dynamics of the activation of the feature maps. Generally, the proposed network shows improvements compared with conventional machine learning methods. Experiments with the opportunity Dataset show that, comparing with baseline LSTM, our algorithm can recognize the human activities with an F1 score of 0.918, increased by 2.4%.
机译:识别人类活动和它们发生形式传感器数据的背景是普遍存在计算中许多研究领域的核心,并且在解决现实生活中具有广泛的应用,以人类为中心的问题。然而,由于用于给定动作的电动机运动的巨大可变性,人类活动识别(Har)是挑战。顺便提高识别准确性和降低对工程特征的依赖,以解决日益复杂的识别问题,我们为可穿戴人类活动识别引入了一种新的框架,这些框架结合了卷积和复发层。卷积层作为特征提取器,并在特征映射中提供输入传感器数据的抽象表示。经常性层模拟特征映射激活的时间动态。通常,与传统机器学习方法相比,所提出的网络显示出改进。与机会数据集的实验表明,与基线LSTM相比,我们的算法可以识别出F1得分为0.918的人类活动,增加2.4%。

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