Morphology based Quality Estimation of Cocoa Beans using Digital Imaging

S. Biswas, Amitava Akuli, Samikshan Das, Haruna Musa Balle Baz, Fredrick Yeboah, A. Ghosh
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Abstract

The objective of this research is to determine the quality of cocoa beans through morphology of their digital images. Samples of cocoa beans were scattered on a bright white paper under a controlled lighting condition. A compact digital camera was used to capture the images. The images were then processed to extract their morphological parameters. Some of the parameters for extracted features are Area, Perimeter, Major Axis Length, Minor Axis Length, Aspect Ratio, Circularity, Roundness, and Ferret Diameter etc. Then feature optimization is implemented to both reduce the computational cost of modeling and, to improve the performance of the model. The cocoa beans are classified into 4 groups, i.e. Large beans, Medium Beans, Small Beans, and Fragmented or Broken Beans. The model of classification used in this paper is the Hierarchy-based Decision Tree Model, a proposed improvement model for normal Decision Tree in which single class will be determined at single step. Five classification approaches were applied ie LDA, QDA, NaiveBayes, Decision Tree and hierarchy-based Decision Tree and the last one gives the maximum accuracy. The result of our proposed model showed that the proposed classification model with morphological feature parameters can accurately classify 93% of beans into four classes.
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基于形态学的数字成像可可豆质量评价
本研究的目的是通过其数字图像的形态学来确定可可豆的质量。在受控的光照条件下,可可豆样本被分散在一张明亮的白纸上。一台小型数码相机被用来捕捉图像。然后对图像进行处理以提取其形态参数。提取特征的一些参数是面积,周长,长轴长度,短轴长度,纵横比,圆度,圆度和雪貂直径等。然后进行特征优化,以降低建模的计算成本,提高模型的性能。可可豆被分为4类,即大豆、中豆、小豆和碎豆。本文使用的分类模型是基于层次的决策树模型,它是对普通决策树的一种改进模型,在该模型中,单步确定单个类别。采用了LDA、QDA、朴素贝叶斯、决策树和基于层次的决策树五种分类方法,最后一种分类方法的准确率最高。结果表明,基于形态特征参数的分类模型可以将93%的豆类准确地分为四类。
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