基于图像处理机器学习的芒果果实成熟状态规范

S. Islam, M. Nurullah, M. Samsuzzaman
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引用次数: 1

摘要

成熟的概念对于获得一个良好的腐殖质水果和蔬菜的贮存期是至关重要的。可以通过各种特征来判断水果的成熟度,其中果皮的颜色是判断成熟度的最标准标准。通常情况下,人类对成熟度的感知可能是错误的,而感知是通过视觉肤色做出的。本研究旨在开发一种技术来检测和指定芒果在不同阶段的状态。在进行研究的第一阶段,将收集到的RGB图像转换为HSV色彩空间。通过考虑“S”通道,使用阈值分割技术对得到的图像进行分割。从分割后的图像中提取出15个重要特征。基于这些特征进行三阶段和六阶段成熟度分类,相应的准确率分别为94%和88%。结果表明,该技术对促进我国芒果产业和经济发展具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mango Fruit's Maturity Status Specification Based on Machine Learning using Image Processing
The notion of maturity is very crucial to obtain a good storage period of septic fruits and vegetables. It is possible to profess the maturity of fruit by various characteristics where color of the skin is the most standard measure for judging maturity. Typically, human's perception can be wrong about the maturity while the perception being made by visualizing the skin color. This research aims to develop a technique to detect and specify the status of mango into different stages. The collected RGB images are converted to HSV color space at the very first phase of the conducted research. By considering the “S” channel, the obtained image is segmented where thresholding technique is used. From the segmented image fifteen vital features are extracted. Three as well as six stage maturity classifications are performed based on these features with 94 and 88 percent of accuracy accordingly. The accuracy of result indicates that the proposed technique can be a helping hand to promote our mango fruit industry as well as our economy.
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