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Daily life Log Recognition based on Automatic Features for Health care Physical Exercise via IMU Sensors

机译:每日生活日志识别基于自动特征通过IMU传感器进行医疗保健体育锻炼

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Wearable inertial based sensors are strong enablers for the acquisition of human daily life-log data. Eventually, many motion devices have often degraded the performance of wearable sensors due to inner/outer environmental effects. In addition, key decisions are made based on human life-log recognition results and precise recognition of human life-logs with lower limits of uncertainty is significantly important. For this purpose, many motion devices have been used in last decade, in order to recognize daily life activities. In this paper, we proposed an efficient model for better recognition results for healthcare patient's daily life-log patterns. We designed a 1D Haar based extraction algorithm and different statistical features to extract valuable features. For activity classification, we used Quadratic Discrimination Analysis (QDA) optimized by Artificial Neural Network (ANN) on two benchmarks PAMAP2 dataset and our self-annotated IM-SB database. The outcome of our system illustrates that our proposed model competes with other advanced methods in term of exactness and effectiveness.
机译:可穿戴惯性的传感器是采集人类日常生活日志数据的强大推动者。最终,许多运动装置由于内/外部环境效应而往往降低可穿戴传感器的性能。此外,关键决策是基于人类生命记录的结果,精确地识别人类寿命,具有较低的不确定性的限制显着重要。为此目的,在去年过去十年中使用了许多运动设备,以识别日常生活活动。在本文中,我们提出了一种有效的模型,以更好地识别医疗保健患者日常生活日志模式。我们设计了基于1D哈尔的提取算法和不同的统计特征,以提取有价值的功能。对于活动分类,我们使用了由人工神经网络(ANN)优化的二次辨别分析(QDA)在两个基准2数据集和我们自注释的IM-SB数据库上进行了优化。我们的系统结果表明我们的拟议模型在精确性和有效性方面与其他先进方法竞争。

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