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User adaptation of convolutional neural network for human activity recognition

机译:卷积神经网络的用户适应性用于人类活动识别

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Recently, monitoring human activities using smart-phone sensors, such as accelerometers, magnetometers, and gyro-scopes, has been proved effective to improve productivity in daily work. Since human activities differ largely among individuals, it is important to adapt their model to each individual with a small amount of his/her data. In this paper, we propose a user adaptation method using Learning Hidden Unit Contributions (LHUC) for Convolutional Neural Networks (CNN). It inserts a special layer with a small number of free parameters between each of two CNN layers and estimates the free parameters using a small amount of data. We collected smartphone data of 43 hours from 9 users and utilized them to evaluate our method. It improved the recognition performance by 3.0% from a user-independent model on average. The largest improvement among users was 13.6%.
机译:最近,事实证明,使用智能手机传感器(如加速度计,磁力计和陀螺仪)监视人类活动可有效提高日常工作效率。由于人类活动在个体之间差异很大,因此使用少量他/她的数据使他们的模型适应每个个体是很重要的。在本文中,我们提出了一种使用卷积神经网络(CNN)的学习隐藏单元贡献(LHUC)的用户适应方法。它在两个CNN层之间插入一个带有少量自由参数的特殊层,并使用少量数据来估计自由参数。我们从9位用户那里收集了43小时的智能手机数据,并利用他们评估了我们的方法。与独立于用户的模型相比,它的识别性能平均提高了3.0%。用户中最大的改进是13.6%。

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