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Mass estimation of mango fruits (Mangifera indica L., cv. ‘Nam Dokmai’) by linking image processing and artificial neural network

机译:通过链接图像处理和人工神经网络对芒果(Mangifera indica L.,cv。“ Nam Dokmai”)进行质量估计

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Computer-aided estimation of mass for irregularly-shaped fruits is a constructive advancement towards improved post-harvest technologies. In image processing of unsymmetrical and varying samples, object recognition and feature extraction are challenging tasks. This paper presents a developed algorithms that transform images of the mango cultivar ‘Nam Dokmai to simplify subsequent object recognition tasks, and extracted features, like length, width, thickness, and area further used as inputs in an artificial neural network (ANN) model to estimate the fruit mass. Seven different approaches are presented and discussed in this paper explaining the application of specific algorithms to obtain the fruit dimensions and to estimate the fruit mass. The performances of the different image processing approaches were evaluated. Overall, it can be stated that all the treatments gave satisfactory results with highest success rates of 97% and highest coefficient of efficiencies of 0.99 using two input parameters (area and thickness) or three input parameters (length, width, and thickness).
机译:计算机辅助估计不规则形状水果的质量是朝着改进收获后技术的建设性进步。在不对称和变化样本的图像处理中,目标识别和特征提取是具有挑战性的任务。本文介绍了一种经过开发的算法,该算法可以对芒果品种'Nam Dokmai的图像进行转换,以简化后续的对象识别任务,并提取诸如长度,宽度,厚度和面积之类的特征,进一步用作人工神经网络(ANN)模型的输入,估计水果的质量。本文提出并讨论了七种不同的方法,解释了特定算法在获取水果尺寸和估计水果质量方面的应用。评估了不同图像处理方法的性能。总体而言,可以说,使用两个输入参数(面积和厚度)或三个输入参数(长度,宽度和厚度),所有处理均给出令人满意的结果,最高成功率为97%,最高效率系数为0.99。

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