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Smartphones based Online Activity Recognition for Indoor Localization using Deep Convolutional Neural Network

机译:基于智能手机基于在线活动识别,用于使用深卷积神经网络进行室内本地化

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In the indoor environment, the activity of the pedestrian can reflect some semantic information, for example, if a user's activity is recognized as taking elevator, the location of the user is inferred to be in the elevator. These activities can be used as the landmarks for indoor localization. The development of sensor technology enhances the smartphone's sensing and computational capabilities. Using the smartphones, the activity of the pedestrian can be recognized. Current methods rely on extracting complex hand-crafted features, thus leading to the incapability of real time pedestrian activities identification. In this paper, we propose a real time pedestrian activities recognition method based on deep convolutional neural network. A new deep convolutional neural (CNN) network has been designed to learn the proper features automatically. Experiments show that the proposed method achieves approximately 95.21% accuracy in about 2 seconds in identifying nine types of activities, including still, walk, upstairs, up elevator, up escalator, down elevator, down escalator, downstairs and turning. Besides, we transplant the activity recognition algorithm to smartphones using tensorflow. Moreover, we have built a pedestrian activity database, which contains more than 6 GB data of accelerometer, magnetometer, gyroscope and barometer collected with various types of smartphones. We will make it public to contribute the academic research.
机译:在室内环境中,行人的活动可以反映一些语义信息,例如,如果用户的活动被识别为拍摄电梯,则推断用户的位置处于电梯中。这些活动可以用作室内本地化的标志性标志。传感器技术的开发增强了智能手机的传感和计算能力。使用智能手机,可以识别行人的活动。目前的方法依靠提取复杂的手工制作特征,从而导致实时行人活动的无法识别。本文提出了基于深卷积神经网络的实时行人活动识别方法。新的深度卷积神经(CNN)网络旨在自动学习适当的功能。实验表明,该方法在识别九种活动时达到大约2秒的精度约为95.21%,包括静止,楼上,上楼,上楼,上楼,升降机,下台自动座,楼下和转动。此外,我们使用TensorFlow将活动识别算法移植到智能手机。此外,我们建立了一个行人活动数据库,其中包含超过6 GB数据的加速度计,磁力计,陀螺仪和带各种类型的智能手机收集的晴雨表。我们将公开推广学术研究。

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