Machine learning approach for classification of Dalium guineense fruits

M.G. Akpan, U. D. George, D.N. Onwe
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Abstract

Having a mixture of similar items that needs to be separated for processing or for storage is a common challenge. Dalium guineense (DG) is a wild fruit with epicarp that could be broken accidentally or intentionally during harvest or in  the course  of processing. This research attempts to develop a model for classification of DG fruits into whole fruits and  deshelled fruits each with fifteen physical characteristics (Length (l), width (w), thickness (t), geometric mean diameter,  arithmetic mean  diameter, specific mean diameter, equivalent mean diameter, surface area, aspect ratio, surface area, sphericity, unit mass,  lw (product of length and width), lt (product of length and thickness) and wt (product of width and thickness)) using a machine learning approach. A 15-3-2 Neural Network (NN) architecture was used to develop the classification model. The deshelled fruits were all correctly classified while 95 of the whole fruits were correctly classified with 5 of the fruits misclassified. The result shows that the classification model was able to achieve an accuracy of 97.5%, sensitivity of 100%, and precision of 95.2%. Increasing the number of processing elements in the hidden processing layer of the NN contributed no positive effect on the performance of the model. This model is therefore suitable for classification purpose, leading to appropriate processing and handling of DG with high accuracy.
大叶女贞果实分类的机器学习方法
在加工或储存过程中,需要将类似物品的混合物分离开来,这是一项常见的挑战。Dalium guineense(DG)是一种具有外果皮的野生水果,在收获或加工过程中可能会意外或有意地破损。本研究试图利用机器学习方法,建立一个模型,根据 15 种物理特征(长度(l)、宽度(w)、厚度(t)、几何平均直径、算术平均直径、比平均直径、等效平均直径、表面积、长宽比、表面积、球形度、单位质量、lw(长度与宽度的乘积)、lt(长度与厚度的乘积)和 wt(宽度与厚度的乘积))将 DG 果实分为完整果实和去壳果实。该分类模型采用 15-3-2 神经网络(NN)结构。去壳水果全部被正确分类,95 个完整水果被正确分类,5 个水果被错误分类。结果表明,分类模型的准确率达到 97.5%,灵敏度达到 100%,精确度达到 95.2%。增加 NN 隐藏处理层中处理元素的数量对模型的性能没有积极影响。因此,该模型适用于分类目的,可对危险品进行适当处理和高精度处理。
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