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首页> 外文期刊>Procedia Computer Science >Classification of Recurrence Plots’ Distance Matrices with a Convolutional Neural Network for Activity Recognition
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Classification of Recurrence Plots’ Distance Matrices with a Convolutional Neural Network for Activity Recognition

机译:利用卷积神经网络对活动图进行距离图的距离矩阵分类

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With the emergence of ubiquitous sensing technologies, it is now possible to continuously monitor users during their everyday activities in order to provide personalized feedback and interventions. For example, fitness trackers can count steps and motivate users to keep active. With their rich set of sensors, smartphones are also capable of monitoring user behavior such as physical activity and location. Smartphones’ inertial sensors have been used to recognize different types of activities. Usually, statistical sets of features from time and/or frequency domain are extracted from the raw signals to train machine learning models. The final performance of the system will depend on the set of features which needs to be defined by the researcher. In this work, we propose a method based on recurrence plots’ distance matrices and convolutional neural network (CNN) that does not require feature engineering. A recurrence plot is a visualization of the recurrent states of a dynamical system. For the activity recognition task, the raw acceleration signal is transformed into an image-like representation of recurrent states and a CNN is then trained with those images. The results show that this method is able to achieve better results than a feature based approach in terms of accuracy and recall.
机译:随着无处不在的传感技术的出现,现在有可能在用户的日常活动中不断对其进行监视,以提供个性化的反馈和干预措施。例如,健身追踪器可以计算步数并激励用户保持活跃。凭借其丰富的传感器集,智能手机还能够监视用户的行为,例如身体活动和位置。智能手机的惯性传感器已用于识别不同类型的活动。通常,从原始信号中提取来自时域和/或频域的统计特征集,以训练机器学习模型。系统的最终性能将取决于研究人员需要定义的功能集。在这项工作中,我们提出了一种基于递归图的距离矩阵和卷积神经网络(CNN)的方法,该方法不需要特征工程。递归图是动态系统的递归状态的可视化。对于活动识别任务,原始加速度信号被转换为递归状态的图像表示,然后使用这些图像训练CNN。结果表明,与基于特征的方法相比,该方法在准确性和查全率方面能够取得更好的结果。

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