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Wearable Sensors for Activity Analysis using SMO-based Random Forest over Smart home and Sports Datasets

机译:用于基于智能家居和体育数据集的基于SMO的随机森林进行活动分析的可穿戴传感器

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Human activity recognition using MotionNode sensors is getting prominence effect in our daily life logs. Providing accurate information on human's activities and behaviors is one of the most challenging tasks in ubiquitous computing and human-Computer interaction. In this paper, we proposed an efficient model for having statistical features along SMO-based random forest. Initially, we processed a 1-D Hadamard transform wavelet and 1-D LBP based extraction algorithm to extract valuable features. For activity classification, we used sequential minimal optimization along with Random Forest over two benchmarks USC-HAD dataset and IMSB datasets. Experimental results show that our proposed model can compete with other state-of-the-art methods and can be effectively used to recognize robust human activities in terms of efficiency and accuracy.
机译:使用MotionNode传感器进行人类活动识别正在我们的日常生活日志中获得显着效果。在无处不在的计算和人机交互中,提供有关人类活动和行为的准确信息是最具挑战性的任务之一。在本文中,我们提出了一个有效的模型,用于基于SMO的随机森林具有统计特征。最初,我们处理了一维Hadamard变换小波和基于一维LBP的提取算法以提取有价值的特征。对于活动分类,我们在两个基准USC-HAD数据集和IMSB数据集上使用了顺序最小优化和随机森林。实验结果表明,我们提出的模型可以与其他最新方法竞争,并且可以有效地用于识别效率和准确性方面强大的人类活动。

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