木瓜大小分类的形状特征分析

S. Riyadi, Ashrani Aizzuddin Abd. Rahni, M. Mustafa, A. Hussain
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引用次数: 38

摘要

出口前,番木瓜要经过质量控制和分级检验。对于大小分级,水果是手动称重,因此这种做法是繁琐的,耗时和劳动密集。因此,本文将讨论一种利用形状特征分析进行木瓜大小分级的计算机视觉系统的开发。该方法包括数据采集,以收集图像及其权重。采用基于Otsu方法的自动阈值法将RGB图像转换为二值图像。采用形态学处理方法对图像进行增强,以区分木瓜目标和背景。然后提取木瓜图像的形状特征,包括面积、平均直径和周长。我们根据这三个特征的组合进行分类,研究提取的特征的唯一性。每个组合分别被输入神经网络进行训练和测试。在本研究中,所提出的技术能够以超过94%的准确率进行木瓜大小分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Shape Characteristics Analysis for Papaya Size Classification
Prior to export, papaya are subjected to inspection for the purpose of quality control and grading. For size grading, the fruit is weighed manually hence the practice is tedious, time consuming and labor intensive. Therefore, this paper will discuss the development of a computer vision system for papaya size grading using shape characteristic analysis. The methodology involves data acquisition to collect the images and their weights. The RGB images were converted to binary images using automatic thresholding based on the Otsu method. Some morphological procedures were involved for image enhancement to distinguish the papaya object from the background. Then the shape characteristics consisting of area, mean diameter and perimeter were extracted from the papaya images. We classified according to combinations of the three features to study the uniqueness of the extracted features. Each combination was fed separately to a neural network for training and testing. The proposed technique showed the ability to perform papaya size classification with more than 94% accuracy in this research.
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