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首页> 外文期刊>IEEE transactions on wireless communications >Federated Echo State Learning for Minimizing Breaks in Presence in Wireless Virtual Reality Networks
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Federated Echo State Learning for Minimizing Breaks in Presence in Wireless Virtual Reality Networks

机译:联邦回声状态学习可最大程度地减少无线虚拟现实网络中的状态中断

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In this paper, the problem of enhancing the virtual reality (VR) experience for wireless users is investigated by minimizing the occurrence of breaks in presence (BIP) that can detach the users from their virtual world. To measure the BIP for wireless VR users, a novel model that jointly considers the VR application type, transmission delay, VR video quality, and users' awareness of the virtual environment is proposed. In the developed model, base stations (BSs) transmit VR videos to the wireless VR users using directional transmission links so as to provide high data rates for the VR users, thus, reducing the number of BIP for each user. Since the body movements of a VR user may result in a blockage of its wireless link, the location and orientation of VR users must also be considered when minimizing BIP. The BIP minimization problem is formulated as an optimization problem which jointly considers the predictions of users' locations, orientations, and their BS association. To predict the orientation and locations of VR users, a distributed learning algorithm based on the machine learning framework of deep echo state networks (ESNs) is proposed. The proposed algorithm uses federated learning to enable multiple BSs to locally train their deep ESNs using their collected data and cooperatively build a learning model to predict the entire users' locations and orientations. Using these predictions, the user association policy that minimizes BIP is derived. Simulation results demonstrate that the developed algorithm reduces the users' BIP by up to 16 and 26, respectively, compared to centralized ESN and deep learning algorithms.
机译:在本文中,通过最小化可以使用户脱离虚拟世界的在线中断(BIP)的发生,研究了增强无线用户虚拟现实(VR)体验的问题。为了衡量无线VR用户的BIP,提出了一种新颖的模型,该模型综合考虑了VR应用类型,传输延迟,VR视频质量以及用户对虚拟环境的了解。在开发的模型中,基站(BS)使用定向传输链路将VR视频传输到无线VR用户,从而为VR用户提供高数据速率,从而减少了每个用户的BIP数量。由于VR用户的身体运动可能会导致其无线链接被阻塞,因此在最小化BIP时也必须考虑VR用户的位置和方向。 BIP最小化问题被表述为一个优化问题,该问题综合考虑了用户位置,方向及其BS关联的预测。为了预测虚拟现实用户的方向和位置,提出了一种基于深度回波状态网络(ESN)机器学习框架的分布式学习算法。所提出的算法使用联合学习来使多个BS使用其收集的数据在本地训练其深层ESN,并共同构建学习模型以预测整个用户的位置和方向。使用这些预测,可以得出使BIP最小化的用户关联策略。仿真结果表明,与集中式ESN和深度学习算法相比,该算法可将用户的BIP分别降低多达16和26。

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