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Physical activity recognition based on rotated acceleration data using quaternion in sedentary behavior : A preliminary study

机译:基于四元数的久坐行为基于旋转加速度数据的体育活动识别的初步研究

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This paper suggests a physical activity assessment method based on quaternion. To reduce user inconvenience, we measured the activity using a mobile device which is not put on fixed position. Recognized results were verified with various machine learning algorithms, such as neural network (multilayer perceptron), decision tree (J48), SVM (support vector machine) and naive bayes classifier. All algorithms have shown over 97% accuracy including decision tree (J48), which recognized the activity with 98.35% accuracy. As a result, physical activity assessment method based on rotated acceleration using quaternion can classify sedentary behavior with more accuracy without considering devices' position and orientation.
机译:本文提出了一种基于四元数的体育活动评估方法。为了减少用户的不便,我们使用未放置在固定位置的移动设备测量了活动。通过各种机器学习算法(例如神经网络(多层感知器),决策树(J48),SVM(支持向量机)和朴素贝叶斯分类器)对识别的结果进行了验证。包括决策树(J48)在内的所有算法均显示出97%以上的准确性,该算法以98.35%的准确性识别活动。结果,基于使用四元数的旋转加速度的体育活动评估方法可以更准确地对久坐行为进行分类,而无需考虑设备的位置和方向。

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