Mango Quality Grading using Deep Learning Technique: Perspectives from Agriculture and Food Industry

Varsha Bhole, Arun Kumar
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引用次数: 25

Abstract

India is an agrarian country; agriculture business is major source of income. India holds the first rank in mango (Mangifera Indica Linn) production worldwide. The precise grading of the fruit acts extensively in agricultural sector for the commercial development of India. Prior to bring the agricultural products to the market, it is essential to classify and grade them automatically without manual intervention. In this research study, we have designed and implemented deep learning-centered non-destructive mango sorting and grading system. The designed quality assessment scheme comprises of two phases: developing hardware and software. The hardware is built to photograph the RGB and thermal images of mango fruits from all the directions (360°) automatically. From these images, designed software classifies mangoes into three grades according to quality viz. Extra class, Class-I, and Class-II. Mango grading has been done by using parameters such as defects, shape, size, and maturity. In the present work, transfer learning based pre-trained SqueezeNet model has been employed to assess grading of mangoes. The test result reveals that classification accuracy of proposed system is 93.33% and 92.27% with the training time of 30.03 and 7.38 minutes for RGB and thermal images respectively and shows four times speed up through thermal imaging.
使用深度学习技术的芒果质量分级:来自农业和食品工业的观点
印度是一个农业国家;农业经营是主要的收入来源。印度是世界上芒果产量第一的国家。水果的精确分级在印度农业部门的商业发展中起着广泛的作用。在将农产品推向市场之前,必须在没有人工干预的情况下对农产品进行自动分类和分级。在本研究中,我们设计并实现了以深度学习为中心的芒果无损分类分级系统。所设计的质量评估方案包括硬件开发和软件开发两个阶段。该硬件可以自动从各个方向(360°)拍摄芒果果实的RGB和热图像。根据这些图片,设计的软件将芒果按照质量分为特级、一级和二级三个等级。芒果分级是通过使用缺陷、形状、大小和成熟度等参数来完成的。在本研究中,采用迁移学习为基础的预训练SqueezeNet模型来评估芒果的分级。测试结果表明,该系统对RGB图像和热图像的分类准确率分别为93.33%和92.27%,训练时间分别为30.03分钟和7.38分钟,热成像速度提高了4倍。
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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