利用边缘云为 UGV 提供实时物体检测服务

Yuvraj Chowdary Makkena, Prashanth P S, Praveen Tammana, Praveen Chandrahas, Rajalakshmi Pachamuthu
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引用次数: 0

摘要

近年来,自主导航技术取得了长足进步,在受控环境中成功应用。计算能力和机器学习技术的提高促进了这一成就的取得。然而,要在所有环境中广泛应用,克服众多挑战至关重要。其中一个明显的障碍是如何为计算密集型应用提供可靠、低延迟和经济高效的数据处理解决方案。为了应对这一挑战,本演示研究了将计算密集型任务从 UGV 卸载到附近边缘云的可能性,并从延迟和吞吐量方面描述了其性能。通过这种方式,UGV 上的计算密集型工作负载将被简单的 API 调用所取代,从而部署基于边缘云的服务。它还能保持 UGV 系统设计的简单性,降低硬件成本,并节省功耗。这种方法可为受控环境中的自动驾驶车辆(如校园班车、农业漫游车和仓库漫游车)带来显著优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Object Detection as a Service for UGVs Using Edge Cloud
Autonomous navigation has made significant strides in recent years, finding successful deployment in controlled environments. This achievement has been facilitated by the increased computational power and machine learning techniques. Nevertheless, overcoming numerous challenges is crucial for its widespread adoption across all environments. One notable obstacle involves the provision of dependable, low-latency, and cost-effective data processing solutions for compute-intensive applications. To tackle this challenge, this demo investigates the potential for offloading compute-intensive tasks from a UGV to a nearby edge cloud and characterize the performance in terms of latency and throughput. By doing so, compute-heavy workloads on a UGV are replaced by simple API calls to edge cloud-based services deployed. It also keeps the UGV system design simple, reduces hardware costs, and saves power consumption. This approach offers significant benefits for autonomous vehicles in controlled environments such as campus shuttles, agricultural rovers, and warehouse rovers.
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