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Wearable Edge AI Applications for Ecological Environments

机译:可穿戴Edge AI应用生态环境

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摘要

Ecological environments research helps to assess the impacts on forests and managing forests. The usage of novel software and hardware technologies enforces the solution of tasks related to this problem. In addition, the lack of connectivity for large data throughput raises the demand for edge-computing-based solutions towards this goal. Therefore, in this work, we evaluate the opportunity of using a Wearable edge AI concept in a forest environment. For this matter, we propose a new approach to the hardware/software co-design process. We also address the possibility of creating wearable edge AI, where the wireless personal and body area networks are platforms for building applications using edge AI. Finally, we evaluate a case study to test the possibility of performing an edge AI task in a wearable-based environment. Thus, in this work, we evaluate the system to achieve the desired task, the hardware resource and performance, and the network latency associated with each part of the process. Through this work, we validated both the design pattern review and case study. In the case study, the developed algorithms could classify diseased leaves with a circa 90% accuracy with the proposed technique in the field. This results can be reviewed in the laboratory with more modern models that reached up to 96% global accuracy. The system could also perform the desired tasks with a quality factor of 0.95, considering the usage of three devices. Finally, it detected a disease epicenter with an offset of circa 0.5 m in a 6 m × 6 m × 12 m space. These results enforce the usage of the proposed methods in the targeted environment and the proposed changes in the co-design pattern.
机译:生态环境研究有助于评估对森林和管理森林的影响。新软硬件技术的使用执行了与此问题相关的任务的解决方案。此外,对大数据吞吐量的缺乏连通性提高了基于边缘计算的解决方案的需求。因此,在这项工作中,我们评估在森林环境中使用可穿戴边缘AI概念的机会。对于此事,我们向硬件/软件共同设计过程提出了一种新的方法。我们还解决了创建可穿戴Edge AI的可能性,其中无线个人和身体区域网络是使用Edge AI构建应用程序的平台。最后,我们评估一个案例研究,以测试在可穿戴的环境中执行优先级任务的可能性。因此,在这项工作中,我们评估系统以实现所需的任务,硬件资源和性能以及与过程的每个部分相关联的网络延迟。通过这项工作,我们验证了设计模式审查和案例研究。在案例研究中,发达的算法可以将患病叶与大约90%的精度分类,在该领域的建议技术。该结果可以在实验室中审查,具有更具现代模型,可达高达96%的全球准确性。考虑到三个设备的使用,该系统还可以执行具有0.95的质量因子的所需任务。最后,它检测到一种疾病震中,在6米×6米×12米空间中具有大约0.5米的偏移量。这些结果强制使用所提出的方法在目标环境中的使用以及共同设计模式的提议变更。

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