Artificial intelligence has smoothly penetrated several economic activities, especially monitoring and control applications, including the agriculture sector. However, research efforts toward low-power sensing devices with fully functional machine learning (ML) on-board are still fragmented and limited in smart farming. Biotic stress is one of the primary causes of crop yield reduction. With the development of deep learning in computer vision technology, autonomous detection of pest infestation through images has become an important research direction for timely crop disease diagnosis. This paper presents an embedded system enhanced with ML functionalities, ensuring continuous detection of pest infestation inside fruit orchards. The embedded solution is based on a low-power embedded sensing system along with a Neural Accelerator able to capture and process images inside common pheromone-based traps. Three different ML algorithms have been trained and deployed, highlighting the capabilities of the platform. Moreover, the proposed approach guarantees an extended battery life thanks to the integration of energy harvesting functionalities. Results show how it is possible to automate the task of pest infestation for unlimited time without the farmer's intervention.
翻译:人工智能已顺利渗透到若干经济活动中,特别是监测和控制应用,包括农业部门;然而,对机载机载机载机能充分学习(ML)的低功率感测装置的研究工作仍然支离破碎,在智能农作方面受到限制;生物压力是降低作物产量的主要原因之一;随着计算机视觉技术的深入学习,通过图像自动检测虫害已成为及时诊断作物疾病的重要研究方向;本文件介绍了一个内嵌系统,该系统由ML功能强化,确保不断检测水果果园内的虫害;嵌入的解决方案基于一个低功率嵌入式感测系统,以及一个能捕捉和处理基于球质的共同陷阱内图像的神经加速器;培训并运用了三种不同的ML算法,突出了平台的能力;此外,拟议的方法保证了电池寿命的延长,因为能源采集功能的整合;结果显示如何在农民没有干预的情况下将虫害感染任务自动化,不受限制。