Sugarcane Classification for On-Site Assessment Using Computer Vision

Piyapoj Kasempakdeepong, Pondsulee Ponchaiyapruek, Pattamon Viriyothai, Anuwat Songchumrong, Pittipol Kantavat, Prasertsak Pungprasertying
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引用次数: 1

Abstract

In this paper, we present a machine intelligent system that can automatically classify sugarcane images into predefined categories. This system is developed in order to facilitate the operation in sugar manufacturing factories and can be beneficial to the sugar industry as a whole. The software system consists of the core computer vision module and other compounds, such as user interfaces and database management. To develop the core module, we apply deep learning models based on convolutional neural networks, which are currently state-of-the-art models for computer vision. The best models trained and evaluated on our sugarcane datasets achieve more than 90% multi-class accuracy in almost all settings. We have incorporated the trained model into the prototype system and successfully installed the system to test operating at one of the major sugar manufacturing facilities in the previous sugarcane harvesting season.
基于计算机视觉的甘蔗现场评估分类
在本文中,我们提出了一个机器智能系统,可以自动将甘蔗图像分类到预定义的类别中。本系统的开发是为了方便制糖工厂的操作,对整个制糖行业都是有益的。软件系统由计算机视觉核心模块和用户界面、数据库管理等组成。为了开发核心模块,我们应用了基于卷积神经网络的深度学习模型,这是目前计算机视觉领域最先进的模型。在我们的甘蔗数据集上训练和评估的最佳模型在几乎所有设置下都能达到90%以上的多类准确率。我们已经将训练过的模型整合到原型系统中,并成功地安装了该系统,在上一个甘蔗收获季节在一个主要的制糖工厂测试运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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