基于lora的边缘计算节点节能目标检测机制

Anshul Jindal, Jiby Mariya Jose, S. Benedict, M. Gerndt
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引用次数: 0

摘要

几十年来,计算机视觉的不断发展为智能移动、智能医疗、教育、金融等各个研究领域注入了新的维度。尽管存在挑战,但与自动目标检测、深度学习辅助数据管道和节能端到端解决方案相关的研究工作使研究人员有了新的认识。本文提出了一种基于边缘节点(如Raspberry Pi、Coral DevBoard和Nvidia Jetson Nano)的高效远程(LoRA)通信媒体的目标检测系统。所提出的方法利用高效的方法来协同卸载与目标检测相关的任务,例如使用LoRA跨计算节点的捕获图像、训练图像和推断对象。此外,本研究试图揭示图像在三种不同边缘节点上的推理能力。在深度学习模型的推理期间,所提出的工作已经实现了至少1.2瓦的功率差异,而不会挑战相对于基本模型的预测精度。
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LoRa-Powered Energy-Effcient Object Detection Mechanism in Edge Computing Nodes
The ongoing accomplishments in the decades-long realization of computer vision have infused new dimensions in various research areas such as smart mobility, smart healthcare, education, finance, and so forth. Research works relating to automated object detection, deep learning-assisted data pipelines, and energy-efficient end-to-end solutions have enabled newer perceptions among researchers, albeit the existence of challenges. This paper proposes an object detection system using energy-efficient Long Range (LoRA) communication media on edge nodes such as Raspberry Pi, Coral DevBoard, and Nvidia Jetson Nano. The proposed approach utilized energy-efficient methods to collaboratively offload object detection-related tasks such as capturing images, training images, and inferring objects across a compendium of computing nodes using LoRA. In addition, this research study has attempted to reveal the inference capabilities of images on three different edge nodes. The proposed work has achieved a power difference of at least 1.2 watts during the inference period of the deep learning models without challenging the prediction accuracy with respect to the base model.
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