Strawberry Fruit Quality Assessment for Harvesting Robot using SSD Convolutional Neural Network

Muhammad Fauzan Ridho, Irwan
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引用次数: 1

Abstract

Strawberry has a tremendous economic value as well as being visually appealing. Therefore, strawberry farmers need to ensure that they only harvest good quality strawberries. However, assessing the quality of strawberries is not an easy problem, especially for local plantations which do not have enough human resources. As robotics becomes accessible and widely used for agriculture work such as harvesting fruit, the real-time embedded system computation power becomes much more powerful nowadays. This paper discusses the harvesting robot's ability to distinguish the quality of strawberries in realtime detection using computer vision technology in the form of object detection by utilizing a deep neural network in a single board computer (SBC). The robot software is built on Robot Operating System (ROS) framework. The proposed method is tested on a robot equipped with a monocular camera. The learning process shows that the robot can detect and differentiate between good and bad quality strawberries with 90% accuracy and maintain a high frame rate.
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基于SSD卷积神经网络的草莓果实采摘机器人品质评价
草莓具有巨大的经济价值和视觉吸引力。因此,草莓种植者需要确保他们只收获优质的草莓。然而,评估草莓的质量并不是一个容易的问题,特别是对于没有足够人力资源的当地种植园。随着机器人技术在收获水果等农业工作中的普及和广泛应用,嵌入式系统的实时计算能力变得越来越强大。本文利用单板计算机(SBC)中的深度神经网络,以物体检测的形式,讨论了利用计算机视觉技术实时检测草莓质量的收获机器人的能力。机器人软件基于机器人操作系统(ROS)框架。在一个安装了单目摄像机的机器人上进行了实验。学习过程表明,机器人能够以90%的准确率检测和区分草莓的好坏,并保持较高的帧率。
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