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首页> 外文期刊>IEEE Transactions on Instrumentation and Measurement >A Machine Vision-Based Maturity Prediction System for Sorting of Harvested Mangoes
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A Machine Vision-Based Maturity Prediction System for Sorting of Harvested Mangoes

机译:基于机器视觉的芒果采摘成熟度预测系统

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摘要

Seasonal fruits, like mango (Mangifera Indica L.), are harvested from gardens or farms in batches; the mangoes present in each batch are not uniformly matured, therefore, sorting of mangoes into different groups is necessary for transporting them into different locations. With this background, this paper proposes a machine vision-based system for classification of mangoes by predicting maturity level, and aimed to replace manual sorting system. The prediction of maturity level has been performed from the video signal collected by the Charge Coupled Device (CCD) camera placed on the top of the conveyer belt carrying mangoes. Extracted image frames from the video signal have been corrected and processed to extract various features, which were found to be more relevant for the prediction of maturity level. Recursive feature elimination technique in combination with support vector machine (SVM)-based classifier has been employed to identify the most relevant features among the initially chosen 27 features. Finally, the optimum set of reduced number of features have been obtained and used for classification of the mangoes into four different classes according to the maturity level. For classification, an ensemble of seven binary SVM classifiers has been combined in error correcting output code, and the minimum hamming distance-based rule has been applied in decision making phase. For the experimental study, the mangoes of five different varieties were collected from three different locations and in three different batches. The obtained experimental result found to provide an average classification accuracy up to 96%.
机译:芒果(Mangifera Indica L.)等时令水果是从花园或农场分批收获的;每个批次中存在的芒果不是均匀成熟的,因此,将芒果分类到不同的组中对于将它们运输到不同的位置是必要的。在此背景下,本文提出了一种基于机器视觉的芒果成熟度分类系统,旨在代替人工分拣系统。成熟度的预测是根据放置在运送芒果的传送带顶部的电荷耦合器件(CCD)摄像机收集的视频信号执行的。已对从视频信号中提取的图像帧进行了校正和处理,以提取各种特征,这些特征与预测成熟度水平更为相关。结合基于支持向量机(SVM)的分类器的递归特征消除技术已被用来识别最初选择的27个特征中最相关的特征。最终,获得了减少特征数量的最佳集合,并将其用于根据成熟度将芒果分类为四个不同的类别。对于分类,在纠错输出代码中组合了七个二进制SVM分类器,并且在决策阶段已应用基于最小汉明距离的规则。为了进行实验研究,从三个不同的地点分三批收集了五个不同品种的芒果。发现获得的实验结果提供了高达96%的平均分类精度。

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