基于特征提取和机器学习技术的果蔬质量预测研究综述

Anly Antony M, R. Satheeshkumar
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引用次数: 0

摘要

果蔬质量评价在农业生产中起着至关重要的作用。本文回顾了在估计水果和蔬菜质量以及使用机器学习技术对它们进行分级方面的最新进展。由于水果和蔬菜有很高的营养价值,它们的销售需求很高。最重要的是向最终用户提供无毒、优质的产品。水果和蔬菜的缺陷检测对其质量有很大影响。把变质的食物和好的食物放在一起可能会污染整个收藏。为了对食品进行正确的鉴别,需要有相关的特征。在提取和细化感兴趣的特征后,可以训练图像进行无错误分类。本文详细介绍了各种特征提取和机器学习技术,以识别和分级不同种类的水果和蔬菜。本研究通过对多篇文献的梳理,整理出在质量评估中存在的问题,并根据需要进行分类。本综述的结果表明,将图像处理和计算机视觉技术与机器学习技术相结合,超越了传统的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comprehensive Review on Quality Prediction of Fruits and Vegetables using Feature Extraction and Machine Learning Techniques
The quality estimation of fruits and vegetables plays a vital role in the field of agriculture. This paper reviews the latest improvements in estimating the quality of fruits and vegetables as well as grading them using machine learning techniques. As fruits and vegetables have high nutritional value, their sales are on high demand. The prime importance is given to the supply of toxin-free, premium quality products to the end-users. Quality of a fruits and vegetables highly affected by detecting the defects on them. Keeping the spoiled foods along with good food may contaminate the whole collection. Features of interest are needed for proper identification of food product. After extracting and refining features of interest, the images can be trained to error free categorization. This paper presents an elaborated description of various feature extraction and machine learning techniques to identify and grade different kinds of fruits and vegetables. This research study has reviewed many articles to sort out the problems in estimating the quality and classifying them according to the need. The results of this review show that incorporating image processing and computer vision techniques with machine learning techniques surpasses the traditional methods.
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