ROS-based Robotic System for Tomato Disease and Ripeness Classification using Convolutional Neural Networks

Zubaidah Al-Mashhadani, B. Chandrasekaran
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引用次数: 1

Abstract

Robotic systems can play a crucial role in the agricultural field as the increasing demands for crops lead to continuous pressure for more crop quality and quantity. Agricultural work is very tedious under poor weather circumstances. The agricultural robots represent a replacement for labor in carrying out the tiresome tasks and efficiently avoiding exposing humans to health risks. The proposed work implements a ground robot to navigate the farm and monitor the plants using the Robot Operating System. The monitoring includes the classification of nine types of tomato leaf diseases and three tomato ripeness levels using Convolutional Neural Networks and computer vision using a raspberry pi camera. The model is trained on Colab, and raspberry pi3 is used to run Keras pre-trained model on TurtleBot3. Three CNN architectures are used and compared for the disease and ripeness classification of tomatoes.
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基于ros的卷积神经网络番茄病害与成熟度分类机器人系统
随着对作物需求的增加,对作物质量和数量的要求不断提高,机器人系统在农业领域发挥着至关重要的作用。在恶劣的天气条件下,农业工作是很乏味的。农业机器人代表了人工的替代品,可以完成令人厌烦的任务,并有效地避免人类面临健康风险。提出的工作实现了一个地面机器人导航农场和监控植物使用机器人操作系统。监测包括使用卷积神经网络和使用树莓派相机的计算机视觉对九种番茄叶片疾病和三种番茄成熟度进行分类。该模型在Colab上进行训练,使用raspberry pi3在TurtleBot3上运行Keras预训练模型。采用三种CNN架构对番茄的病害和成熟度进行分类,并进行了比较。
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