芒果成熟度预测自训练算法的发展

Nguyen Minh Trieu, Nguyen Truong Thinh
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引用次数: 0

摘要

芒果的品质和成熟度是不均匀的,即使在同一时间从同一棵树上收获芒果,芒果的成熟度对储存和运输时间有很大影响。因此,芒果成熟度的测定非常重要。本研究基于多层前馈神经网络(FFNN)的混合模型,利用芒果的长度、宽度、缺陷、重量、密度、颜色等内外特征来确定芒果的成熟度。在分析颜色空间的基础上对芒果进行分割,然后应用图像处理中的算法。确定体系结构后,使用每个数据点具有14个特征的数据集训练FFNN模型。采用另一种自训练算法提高FFNN的准确率。该系统的成熟度预测均方误差为0.259,结果和实验部分给出了预测结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Self-Training Algorithm for Predicting Mango Maturity
The quality and maturity of mangoes are inhomogeneous, even when mangoes are harvested from the same tree at the same time, however, the maturity of mangoes greatly affects the storage and transport time. Therefore, the determination of mango maturity is very important. This study aims to determine the mango maturity by using the internal and external features of mangoes (length, width, defect, weight, density, and color) based on a hybrid model of a multilayer Feed-Forward Neural Network (FFNN). In detail, the mango is segmented based on analyzing color space then algorithms in image processing are applied. After determining the architecture, the FFNN model is trained with the dataset in which each data point has 14 features. Another self-training algorithm is applied to increase the accuracy of FFNN. The proposed system has a mean-square error of 0.259 in maturity prediction which is shown in the results and experiments section.
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