腐烂水果分拣机械臂:(面向嵌入式系统的低复杂度CNN设计)

M. Amin, Muhammad Hafeez, Qasim Awais
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引用次数: 0

摘要

工业自动化由于其高精度,节省时间和工作不累的能力而彻底改变了加工行业。机械臂作为自动化机器最基本的组成部分,在许多类型的家用和商用自动化装置中被用作基本部件。在本文中,我们提出了一种低复杂度卷积神经网络(CNN)模型,并在树莓派4模块的帮助下成功地将其部署在局部生成的机械臂上。设计的机械臂可以在传送带上对三种芒果(Ataulfo, Alphonso和Keitt)进行检测,定位和分类(基于新鲜或腐烂)。我们生成了大约6000张图像的数据集,并训练了一个基于三卷积层的CNN。利用MatLab对网络进行训练和测试,并将加权网络部署到嵌入式环境(树莓派4模块)中进行实时分类。我们报道了新鲜芒果的分类准确率为98.08%,腐烂芒果的分类准确率为95.75%。对于设计的机器人艺术,实现的角度精度为93.94%,小误差仅为2◦。所提出的模型可以作为深度学习的边缘计算应用程序部署在许多食品或对象分类行业。
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Rotten-Fruit-Sorting Robotic Arm: (Design of Low Complexity CNN for Embedded System)
: Industrial Automation has revolutionized the processing industry due to its high accuracy, the time it saves, and its ability to work without tiring. Being the most fundamental part of automation machines, robotic arms are being used as a fundamental component in many types of domestic as well as commercial automation units. In this paper, we proposed a low-complexity convolutional neural network (CNN) model and successfully deployed it on a locally generated robotic arm with the help of a Raspberry Pi 4 module. The designed robotic arm can detect, locate, and classify (based on fresh or rotten) between three species of Mangos (Ataulfo, Alphonso, and Keitt), on a conveyor belt. We generated a dataset of about 6000 images and trained a three-convolutional-layer-based CNN. Training and testing of the network were carried out with MatLab, and the weighted network was deployed to an embedded environment (Raspberry Pi 4 module) for real-time classification. We reported a classification accuracy of 98.08% in the detection of fresh mangos and 95.75% in the detection of rotten mangos. For the designed robotic art, the achieved angle accuracy was 93.94% with a minor error of only 2 ◦ . The proposed model can be deployed in many food- or object-sorting industries as an edge computing application of deep learning.
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