Human daily activity recognition by fusing accelerometer and multi-lead ECG data

Ruiting Jia, B. Liu
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引用次数: 30

Abstract

Human daily activity recognition has gained much attention since it has a wide range of applications. In this paper, we propose a novel scheme for recognizing human daily activity by fusing multiple wearable sensors, i.e., accelerometer and multi-lead ECG. Firstly, both time and frequency domain features are extracted from raw sensor data. In order to alleviate the computation complexity of subsequent process, the dimensions of feature vectors would be sharply reduced by performing linear discriminant analysis (LDA). Then, the reduced feature vectors are classified by relevance vector machines (RVM). Finally, considering different sensors and leads would provide complementary information about the human activity, the individual classification results are fused at the decision level to improve the overall recognition performance. Experimental results show that if seven leads of ECG and accelerometer are fused, we can even achieve recognition accuracy as high as 99.57%. Furthermore, the proposed scheme has great potential in real-time applications due to its strong ability in feature dimensionality reduction, simple classifier structure, and perfect recognition performance.
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融合加速度计和多导联心电数据的人体日常活动识别
人类日常活动识别因其广泛的应用而备受关注。在本文中,我们提出了一种融合多个可穿戴传感器(即加速度计和多导联心电)来识别人类日常活动的新方案。首先,从原始传感器数据中提取时域和频域特征;为了减轻后续处理的计算复杂度,采用线性判别分析(LDA)将特征向量的维数大幅降低。然后,利用相关向量机(RVM)对约简后的特征向量进行分类。最后,考虑到不同的传感器和引线会提供关于人类活动的互补信息,在决策层面将单个分类结果融合,以提高整体识别性能。实验结果表明,将心电和加速度计的7条导联进行融合,识别准确率高达99.57%。此外,该方法具有较强的特征降维能力、简单的分类器结构和较好的识别性能,在实时应用中具有很大的潜力。
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