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Human-sitting-pose detection using data classification and dimensionality reduction

机译:使用数据分类和降维的人体坐姿检测

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The research area of sitting-pose analysis allows for preventing a range of physical health problems mainly physical. Despite that different systems have been proposed for sitting-pose detection, some open issues are still to be dealt with, such as: Cost, computational load, accuracy, portability, and among others. In this work, we present an alternative approach based on a sensor network to acquire the position-related variables and machine learning techniques, namely dimensionality reduction (DR) and classification. Since the information acquired by sensors is high-dimensional and therefore it might not be saved into embedded system memory, a DR stage based on principal component analysis (PCA) is performed. Subsequently, the automatic posed detection is carried out by the k-nearest neighbors (KNN) classifier. As a result, regarding using the whole data set, the computational cost is decreased by 33 % as well as the data reading is reduced by 10 ms. Then, sitting-pose detection task takes 26 ms, and reaches 75% of accuracy in a 4-trial experiment.
机译:坐姿分析的研究领域可以预防一系列身体健康问题,主要是身体方面的问题。尽管已经提出了用于坐姿检测的不同系统,但是仍有一些未解决的问题需要解决,例如:成本,计算量,准确性,可移植性等。在这项工作中,我们提出了一种基于传感器网络的替代方法,以获取与位置相关的变量和机器学习技术,即降维(DR)和分类。由于传感器获取的信息是高维信息,因此可能无法保存到嵌入式系统内存中,因此将执行基于主成分分析(PCA)的DR阶段。随后,由k最近邻(KNN)分类器执行自动姿势检测。结果,关于使用整个数据集,计算成本减少了33%,数据读取减少了10 ms。然后,坐姿检测任务耗时26 ms,在4次试验中达到75%的准确度。

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