论文标题
使用嵌入式系统带有硬件加速器的实时Apple检测系统:Edge AI应用程序
Real-Time Apple Detection System Using Embedded Systems With Hardware Accelerators: An Edge AI Application
论文作者
论文摘要
果园中苹果的实时检测是估计苹果产量的最有效方法之一,这有助于更有效地管理苹果供应。传统的检测方法使用高度计算机学习算法和密集的硬件设置,由于其重量和功率约束,因此不适合内场Apple检测。在这项研究中,提出了一种从“ Edge AI”进行的实时嵌入式解决方案,用于苹果检测,并在各种嵌入式平台上实施Yolov3-tiny算法,例如Raspberry Pi 3 B+与Intel Movidius Neural Computing Stick(NCS),NVIDIA的Jetson Nano和Jetson Nano和Jetson nano anano和Jesjerson Agetson Xaviers Xaviers Xavier。在意大利北部地区的苹果果园的现场调查期间,使用获得的图像编制了用于训练的数据集,并通过滤除了在不同场景中包含苹果的图像以确保算法的稳健性,从广泛使用的Google数据集中获取了用于测试的图像。拟议的研究调整了Yolov3微型架构以检测小物体。它显示了在廉价且有效的嵌入式硬件上部署自定义模型的可行性,而无需损害平均平均检测准确性(83.64%),并且在诸如重叠苹果,复杂的背景,较小的苹果易受下降的苹果和分支较小的情况下,即使在困难的情况下,也达到了30 fps的框架速率。此外,提议的嵌入式解决方案可以部署在无人接地车辆上,以实时检测,计算和测量苹果的大小,以帮助农民和农艺师的决策和管理技能。
Real-time apple detection in orchards is one of the most effective ways of estimating apple yields, which helps in managing apple supplies more effectively. Traditional detection methods used highly computational machine learning algorithms with intensive hardware set up, which are not suitable for infield real-time apple detection due to their weight and power constraints. In this study, a real-time embedded solution inspired from "Edge AI" is proposed for apple detection with the implementation of YOLOv3-tiny algorithm on various embedded platforms such as Raspberry Pi 3 B+ in combination with Intel Movidius Neural Computing Stick (NCS), Nvidia's Jetson Nano and Jetson AGX Xavier. Data set for training were compiled using acquired images during field survey of apple orchard situated in the north region of Italy, and images used for testing were taken from widely used google data set by filtering out the images containing apples in different scenes to ensure the robustness of the algorithm. The proposed study adapts YOLOv3-tiny architecture to detect small objects. It shows the feasibility of deployment of the customized model on cheap and power-efficient embedded hardware without compromising mean average detection accuracy (83.64%) and achieved frame rate up to 30 fps even for the difficult scenarios such as overlapping apples, complex background, less exposure of apple due to leaves and branches. Furthermore, the proposed embedded solution can be deployed on the unmanned ground vehicles to detect, count, and measure the size of the apples in real-time to help the farmers and agronomists in their decision making and management skills.