Human Activity Recognition (HAR) has been a challenging problem yet it needs to be solved. It will mainly be used for eldercare and healthcare as an assistive technology when ensemble with other technologies like Internet of Things(IoT). HAR can be achieved with the help of sensors, smartphones or images. Deep neural network techniques like artificial neural networks, convolutional neural networks and recurrent neural networks have been used in HAR, both in centralized and federated setting. However, these techniques have certain limitations. RNNs have limitation of parallelization, CNNS have the limitation of sequence length and they are computationally expensive. In this paper, to address the state of art challenges, we present a inertial sensors-based novel one patch transformer which gives the best of both RNNs and CNNs for Human activity recognition. We also design a testbed to collect real-time human activity data. The data collected is further used to train and test the proposed transformer. With the help of experiments, we show that the proposed transformer outperforms the state of art CNN and RNN based classifiers, both in federated and centralized setting. Moreover, the proposed transformer is computationally inexpensive as it uses very few parameter compared to the existing state of art CNN and RNN based classifier. Thus its more suitable for federated learning as it provides less communication and computational cost.
翻译:人类活动认识(HAR)是一个具有挑战性的问题,但需要加以解决。它主要用于老年人护理和保健,作为辅助技术,与诸如Tings(IoT)互联网等其他技术结合使用。HAR可以借助传感器、智能手机或图像实现。深神经网络技术,如人工神经网络、革命性神经网络和经常性神经网络,已经在HAR中央和联合环境中使用。但这些技术有一定的局限性。RNNS在平行化方面有局限性,CNNS有序列长度限制,计算成本昂贵。在本文中,为了应对艺术挑战状况,我们提出了一个基于惯性传感器的新型补丁变异器,使RNNP和CNN为人类活动提供最佳的识别。我们还设计了一个测试台,用于收集实时人类活动数据。所收集的数据还被进一步用于培训和测试拟议的变异器。在实验的帮助下,我们显示拟议的变异器优于CNN和RNNNNG的变异器状态,在联邦化和中央化的变压器中都提供了更廉价的升级的升级和升级的升级的计算。此外,拟议的变压式的升级和升级的升级的升级和升级的升级的升级的升级的升级和升级的升级的升级的升级的升级的升级的计算也比较。