A simple and efficient deep learning-based framework for vegetable recognition

Xian Gong
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Abstract

Since the 21st century, artificial intelligence has been continuously evolving in various fields, particularly in agriculture. Vegetables, as a critical component of agriculture and human diets, have always been a focal point in terms of cultivation, production, and sales. Compared to traditional vegetable classification that requires professional knowledge and experience, AI technology utilizes computer vision to achieve automated classification. This study presents a deep learning-based vegetable recognition system aimed at automating the identification and classification of vegetables. The system utilizes a convolutional neural network (CNN) as its fundamental algorithm, integrating the traditional CNN architecture, which comprises convolutional layers, pooling layers, and fully connected layers. In comparison to other vegetable recognition systems on the market, this system utilizes a simpler architecture for processing and classifying vegetable images, significantly improving the accuracy and compatibility of identification. The research steps comprise data collection, image preprocessing, model training, and model testing. Experimental results demonstrate that the system can rapidly and accurately identify and classify various vegetables, with an average accuracy rate exceeding 95% on the test dataset, showcasing high practical value.
一个简单高效的基于深度学习的蔬菜识别框架
21世纪以来,人工智能在各个领域不断发展,尤其是在农业领域。蔬菜作为农业和人类饮食的重要组成部分,一直是种植、生产和销售的重点。与传统的蔬菜分类需要专业知识和经验相比,人工智能技术利用计算机视觉实现自动分类。本文提出了一种基于深度学习的蔬菜识别系统,旨在实现蔬菜的自动识别和分类。该系统采用卷积神经网络(convolutional neural network, CNN)作为基本算法,融合了传统的CNN架构,包括卷积层、池化层和全连接层。与市场上的其他蔬菜识别系统相比,该系统采用了更简单的结构对蔬菜图像进行处理和分类,显著提高了识别的准确性和兼容性。研究步骤包括数据采集、图像预处理、模型训练和模型测试。实验结果表明,该系统能够快速准确地对各种蔬菜进行识别和分类,在测试数据集上平均准确率超过95%,具有较高的实用价值。
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