使用 Naïve Bayes 方法基于多光谱图像对咖啡果实成熟度进行分类

I’zaz Dhiya ‘Ulhaq, Muhamad Arief Hidayat, Tio Dharmawan
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引用次数: 0

摘要

目前关于基于多光谱图像的咖啡果实成熟度分类的研究采用卷积神经网络(CNN)方法,从高维多光谱图像中提取模式。卷积神经网络的高复杂性允许模型捕捉复杂的特征,但需要更多的时间和计算资源进行模型训练和测试。因此,在本研究中,我们使用 Naïve Bayes 等更简单的方法进行分类,因为其复杂性只取决于特征和样本的数量。该方法只独立考虑每个特征,因此速度快,不需要大量计算资源。Naïve Bayes 方法适用于从咖啡果的多光谱图像中提取的颜色和纹理特征。共有 300 个特征,包括 60 个颜色特征和 240 个纹理特征。实验基于训练数据和测试数据的比较以及每个特征的使用进行。与单独使用颜色或纹理特征相比,颜色和纹理特征的组合显示出更好的性能,最高准确率达到 91.01%。总之,使用奈伊夫贝叶对基于多光谱图像的咖啡果成熟度进行分类的效果还是相当不错的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Coffee Fruit Maturity Level based on Multispectral Image Using Naïve Bayes Method
The current research about the classification of coffee fruit ripeness based on multispectral images has been developed using the Convolutional Neural Network (CNN) method to extract patterns from highdimensional multispectral images. The high complexity of CNN allows the model to capture complex features but requires more time and computational resources for model training and testing. Therefore, in this study, classification is performed using a more straightforward method such as Naïve Bayes because its complexity only depends on the number of features and samples. The method only considers each feature independently, so it has high speed and does not require a lot of computational resources. Naïve Bayes is applied to color and texture features extracted from multispectral images of coffee fruit. There are 300 features consisting of 60 color features and 240 texture features. Experiments were conducted based on the comparison of training and testing data and the use of each feature. The combination of color and texture features showed better performance than color or texture features alone, with the highest accuracy reaching 91.01%. In conclusion, using Naïve Bayes is still reasonably good in classifying the ripeness of coffee fruit based on multispectral images.
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