油棕鲜果串表面颜色测定含油量

Sutat Sae-Tang
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引用次数: 1

摘要

油棕是泰国潜在的树木作物之一。然而,油棕的生产经历了许多方面。价格因素也是问题之一。油棕的价格取决于油棕果实中的含油量,这是由专家估计的。主要考虑的是油棕新鲜果束的成熟度。专家用它的表面颜色来确定。专家的不同经验导致不同的估计。这个问题可以用更精确的化学分析方法来解决。然而,这需要时间和不舒服。在本研究中,人工智能(AI)将应用于估算新鲜水果串(FFB)的含油量。在这项工作中使用了泰国两种流行的油棕。黑紫色的果实,颜色从深紫色到红橙色不等,这取决于它的基因和成熟度。绿色水果,颜色由绿色变为橙色。以油棕果的表面颜色和果束的结构作为特征集。将智能手机相机拍摄的油棕FFB图像输入模型,用于预测油棕FFB中的含油量。将观察到多元线性回归、人工神经网络和卷积神经网络等几种模型。质量模型的度量使用均方根误差(RMSE)。卷积神经网络产生的平均RMSE为727的黑色和4.83的绿色。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of Oil Content in Oil Palm Fresh Fruit Bunch by Its Surface Color
Oil palm is one of the potential tree crops in Thailand. However, the production of oil palm has been experienced many aspects. Price factor is also one of the problems. Price of oil palm depends on the amount of oil content in the oil palm fruit which are estimated by an expert. The main consideration is the ripeness of the oil palm fresh fruit bunches. An expert determines using its surface color. A different experience of experts leads to a different estimation. The problem may be solved using the chemical analysis methods which more accurate. However, it takes time and uncomfortable. In this research, artificial intelligence (AI) will be applied to estimate the oil content in a fresh fruit bunch (FFB). Two popular types of oil palms in Thailand are used in this work. The Nigrescene fruit, color varies from dark purple to red orange depending on its gene and ripeness. The Virescene fruit, color changes from green to orange. The surface color of an oil palm fruit and structure of the bunch were considered as the feature set. An oil palm FFB image from a smartphone camera was fed to the model for predicting the oil content in FFB. Several models such as multi linear regression, artificial neural network and convolution neural network will be observed. The measure of the quality’s model uses the root mean square error (RMSE). The convolution neural network produces the average of RMSE at 727 for Nigrescene and at 4.83 for Virescene.
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