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Determining Banana Types and Ripeness from Image using Machine Learning Methods

机译:使用机器学习方法从图像确定香蕉类型和成熟度

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Customers should have several benchmarks to buy banana from the market. One of them is observing each size to its ripeness. This study present a framework for determining bananas based on types and levels of ripeness from banana peel and images. We use three machine learning method, i.e. k-Nearest Neighbor ( k-NN), Support Vector Machine (SVM), and Decision Tree (DT). The banana is placed on the white background and photographed within 0.6 meters with 17 different position. The images are converted into grayscale mode and become 96x96 pixels. Principal Component Analysis (PCA) is conducted to reduce the dimensionality from 9,216 pixels to 236 pixels and 128 pixels. In this research, SVM is able to provide high accuracy compared to other methods, k-NN and DT, to determine banana types, that is 99.1%. To determine the level of ripeness, k-NN and SVM achieved the same highest result, that is 96.6%. However, SVM has the faster processing time compared to k-NN, that is 5.517s. Furthermore, SVM is also tested by using PCA 256 pixels, PCA 128 pixels, and non-PCA. The result was SVM with PCA 128 pixels was able to reduce the processing time from 5.517s to 5.492s.
机译:客户应该有几个基准来从市场上购买香蕉。其中之一是观察每种尺寸的成熟程度。这项研究提出了一个基于香蕉皮和图像的成熟度类型和水平确定香蕉的框架。我们使用三种机器学习方法,即k最近邻居(k-NN),支持向量机(SVM)和决策树(DT)。香蕉放在白色背景上,并在0.6米内用17个不同的位置拍照。图像将转换为灰度模式并变为96x96像素。进行主成分分析(PCA)可以将尺寸从9,216像素减少到236像素和128像素。在这项研究中,与其他方法(k-NN和DT)相比,SVM能够提供较高的准确性,以确定香蕉类型,即99.1%。为了确定成熟度,k-NN和SVM达到了相同的最高结果,即96.6%。但是,与k-NN相比,SVM具有更快的处理时间,即5.517s。此外,还通过使用PCA 256像素,PCA 128像素和非PCA对SVM进行了测试。结果是PCA 128像素的SVM能够将处理时间从5.517s减少到5.492s。

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