Deep Ensemble Learning for Human Activity Recognition Using Smartphone

Ran Zhu, Zhuoling Xiao, Mo Cheng, Liang Zhou, Bo Yan, Shuisheng Lin, Hongkai Wen
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引用次数: 7

Abstract

The ubiquity of smartphones and their rich set of onboard sensors have created many exciting new opportunities. One important application is activity recognition based on smartphone inertial sensors, which is a fundamental building block for a variety of scenarios, such as indoor pedestrian tracking, mobile health care and smart cities. Though many approaches have been proposed to address the human activity recognition problem, a number of challenges still present: (i) people’s motion modes are very different; (ii) there is very limited amount of training data; (iii) human activities can be arbitrary and complex, and thus handcrafted feature engineering often fail to work; and finally (iv) the recognition accuracy tends to be limited due to confusing activities. To tackle those challenges, in this paper we propose a human activity recognition framework based on Convolutional Neural Network (CNN) using smartphone-based accelerometer, gyroscope, and magnetometer, which achieves 95.62% accuracy, and also presents a novel ensembles of CNN solving the confusion between certain activities like going upstairs and walking. Extensive experiments have been conducted using 153088 sensory samples from 100 subjects. The results show that the classification accuracy of the generalized model can reach 96.29%.
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基于智能手机的人类活动识别深度集成学习
无处不在的智能手机及其丰富的机载传感器创造了许多令人兴奋的新机会。一个重要的应用是基于智能手机惯性传感器的活动识别,这是各种场景的基本组成部分,如室内行人跟踪、移动医疗和智能城市。尽管已经提出了许多方法来解决人类活动识别问题,但仍然存在一些挑战:(1)人们的运动模式非常不同;(ii)训练数据非常有限;(iii)人类活动可能是任意和复杂的,因此手工制作的特征工程往往不起作用;最后(iv)由于活动的混淆,识别的准确性往往受到限制。为了解决这些挑战,本文提出了一种基于卷积神经网络(CNN)的人类活动识别框架,该框架使用基于智能手机的加速度计,陀螺仪和磁力计,准确率达到95.62%,并且还提出了一种新颖的CNN组合,解决了某些活动(如上楼和走路)之间的混淆。广泛的实验使用了来自100名受试者的153088个感官样本。结果表明,广义模型的分类准确率可达96.29%。
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