Distributed and Context Aware Application of Deep Neural Networks in Mobile 3D-Multi-sensor Systems Based on Cloud-, Edge- and FPGA-Computing

Grischan Engel, Faraz Bhatti, Thomas Greiner, M. Heizmann, F. Quint
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引用次数: 3

Abstract

The use of deep neural networks (DNN) for 3Dimage processing significantly enhances visual cognition of mobile systems by considering spatial information. However, training and execution require high computing power. This is crucial in applications with real-time constraints since mobile systems have limited resources. Current approaches do not consider the usage of 3D-sensing. Furthermore, suggested system architectures solely focus on cloud- and edge-computing in combination with load balancing and parallelization for a distributed execution of DNNs. In contrast, we propose a novel system architecture for the distributed and context aware usage of DNNs for image processing tasks in mobile 3D-multi-sensor systems. Thereby, the scalable cloud- and edge-infrastructure is complemented by realtime capable and energy-efficient FPGA-computing. The publishsubscriber pattern facilitates the distributed execution of DNNs as well as their dynamic deployment. Moreover, context information is considered. Thus, a rule-based context model dynamically loads specialized DNNs and selects appropriate devices for execution. Finally, a case-study on a mobile 3D-multi-sensor system for wheeled walkers demonstrates applicability and benefits of the proposed approach.
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基于云计算、边缘计算和fpga计算的移动3d多传感器系统中深度神经网络的分布式和上下文感知应用
利用深度神经网络(DNN)进行三维图像处理,通过考虑空间信息,显著增强了移动系统的视觉认知能力。然而,训练和执行需要很高的计算能力。这在具有实时限制的应用程序中是至关重要的,因为移动系统的资源有限。目前的方法没有考虑到3d传感的使用。此外,建议的系统架构只关注云计算和边缘计算,结合负载平衡和并行化,用于dnn的分布式执行。相比之下,我们提出了一种新的系统架构,用于在移动3d多传感器系统中分布式和上下文感知地使用dnn进行图像处理任务。因此,可扩展的云和边缘基础设施由具有实时能力和节能的fpga计算补充。发布者-订阅者模式促进了dnn的分布式执行及其动态部署。此外,还考虑了上下文信息。因此,基于规则的上下文模型动态加载专门的dnn并选择适当的设备执行。最后,以轮式步行车的移动3d多传感器系统为例,验证了该方法的适用性和优越性。
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