用于柑橘类水果的清洗、图像分类和重量分级的人工智能农场友好型自动机器:设计优化、性能评估和人体工程学评估

IF 4.2 2区 计算机科学 Q2 ROBOTICS
Subir Kumar Chakraborty, A. Subeesh, Rahul Potdar, Narendra Singh Chandel, Dilip Jat, Kumkum Dubey, Pramod Shelake
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引用次数: 1

摘要

采后操作的现代化和园艺加工中新兴技术的渗透为减少采后损失提供了智能解决方案。工作环境和职业健康问题需要立即关注,因为在农场的笨拙姿势和持续的体力劳动倾向于分类和分级活动可能导致肌肉骨骼疾病。本研究的主要目的是开发一种自动化的农场友好型机器,用于实时柑橘水果清洗,基于图像的分类和重量分级;优化设计并配备了包含轻量级卷积神经网络(CNN)模型的嵌入式系统。本研究还包括在实际工作环境中对开发的机器进行全面的人体工程学评估。采用计算流体力学建模和响应面法设计优化,对果蔬洗涤单挑系统进行参数选择。观察到,在稳态条件下,水射流将达到11.36 m/s的速度,最终适合坡度为25°的单一输送机。本文提出了一种柑橘类水果的无创分级和分类方法,该方法利用深度学习将水果分为“接受”和“拒绝”两类。自定义轻量级CNN模型“SortNet”显示了出色的分类结果,总体准确率达到97.6%。人体工程学评价结果表明,操作水果自动分级机时的身体部位不适平均得分(12.3±2.0)明显低于传统方法(30.9±3.3)。此外,在机器操作的情况下,肌肉负荷百分比从28.67到34.31不等,反映了受试者在机器上工作的时间比传统的人工操作更长,而不会感到疲劳。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI-enabled farm-friendly automatic machine for washing, image-based sorting, and weight grading of citrus fruits: Design optimization, performance evaluation, and ergonomic assessment

The modernization of postharvest operations and penetration of emerging technologies in horticultural processing have provided intelligent solutions for reducing postharvest losses. Work environmental and occupational health issues require immediate attention as the awkward posture and continuous drudgery-prone on-farm sorting and grading activities may lead to musculoskeletal disorders. The main objective of this study was to develop an automatic farm-friendly machine for real-time citrus fruit washing, image-based sorting, and weight grading; designed optimally and equipped with an embedded system comprising a lightweight convolutional neural network (CNN) model. Also included in this study was a thorough ergonomic assessment of the developed machine in a real work environment. The parametric choice of the fruit washing and singulation system was performed by employing computational fluid dynamics modeling and response surface methodology designed optimization. It was observed that under steady-state conditions, the water jet would arrive at a velocity of 11.36 m/s which would eventually suit a singulation conveyor with a slope of 25°. A noninvasive grading and sorting approach for citrus fruits is presented in this paper that leverages deep learning to classify the fruits into “accept” and “reject” classes. The custom lightweight CNN model “SortNet” has shown excellent classification results with an overall accuracy of 97.6%. The ergonomic evaluation shows that the average body part discomfort score in case of operating an automatic fruit grading machine was much lower (12.3 ± 2.0) than the traditional method (30.9 ± 3.3). Further, in the case of machine operation, the percentage load on the muscles ranged from 28.67 to 34.31 reflecting that subjects can work for longer duration on the machine without fatigue as compared with the traditional manual operation.

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来源期刊
Journal of Field Robotics
Journal of Field Robotics 工程技术-机器人学
CiteScore
15.00
自引率
3.60%
发文量
80
审稿时长
6 months
期刊介绍: The Journal of Field Robotics seeks to promote scholarly publications dealing with the fundamentals of robotics in unstructured and dynamic environments. The Journal focuses on experimental robotics and encourages publication of work that has both theoretical and practical significance.
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