论文标题

草莓使用异质多处理器平台检测

Strawberry Detection Using a Heterogeneous Multi-Processor Platform

论文作者

Brandenburg, Samuel, Machado, Pedro, Lama, Nikesh, McGinnity, T. M.

论文摘要

在过去的几年中,精确农业项目的数量在收集机器人方面有所增加,其中许多项目从识别农作物到抓住所需的水果或蔬菜的持续进展。精确农业项目中最常见的问题之一是,成功的应用不仅在很大程度上取决于识别水果,而且还确保本地化允许准确的导航。当机器人不在预处理的环境中或植被变得太厚时,这些问题就成为重要因素。此外,在嵌入式平台上运行最先进的深度学习算法也非常具有挑战性,因此大多数时候都以低框架速率以较低的速度。本文提议仅使用一次版本3(YOLOV3)卷积神经网络(CNN),并利用图像处理技术来应用针对草莓检测的精确耕作机器人,该机器人在异质的多处理器平台上加速加速。结果显示,与在处理器侧运行的相同算法相比,在现场编程的门阵列(FPGA)上实现了五次性能加速度,其精度为146张图像的测试集的精度为78.3 \%。

Over the last few years, the number of precision farming projects has increased specifically in harvesting robots and many of which have made continued progress from identifying crops to grasping the desired fruit or vegetable. One of the most common issues found in precision farming projects is that successful application is heavily dependent not just on identifying the fruit but also on ensuring that localisation allows for accurate navigation. These issues become significant factors when the robot is not operating in a prearranged environment, or when vegetation becomes too thick, thus covering crop. Moreover, running a state-of-the-art deep learning algorithm on an embedded platform is also very challenging, resulting most of the times in low frame rates. This paper proposes using the You Only Look Once version 3 (YOLOv3) Convolutional Neural Network (CNN) in combination with utilising image processing techniques for the application of precision farming robots targeting strawberry detection, accelerated on a heterogeneous multiprocessor platform. The results show a performance acceleration by five times when implemented on a Field-Programmable Gate Array (FPGA) when compared with the same algorithm running on the processor side with an accuracy of 78.3\% over the test set comprised of 146 images.

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