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Detecting Repeated Frying on Cooking Oils based on its Visual Properties using Embedded System

机译:基于嵌入式系统的视觉特性检测食用油的重复油炸

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Cooking oil has been widely used to conduct heat from the pan to the food in order to fry the food to affect its taste, color and texture. The exposure to high temperature repetitively can degrade the quality of cooking oil. Moreover, dangerous chemical reaction may affect human health who consume it. The quality of cooking oil can be detected visually from its color and its clarity. In this study, an embedded system to detect cooking oil frequency of use based on its visual properties was designed. The proposed system used color and photodiode sensor to extract the visual information of cooking oil. Then, k-Nearest Neighbor (k-NN) algorithm was implemented on the embedded system platform to predict and classify the cooking oil into 5 classes. There were 49 dataset that were used as training dataset. Using 10-fold cross validation process, k=3 were selected for its lowest misclassification error. Finally, the system was tested using real data test while simultaneously measure its computation time performance. The result shows 100% classification accuracy from 20 test data and on average, k-NN require 24.25 ms to perform the classification on Arduino UNO board.
机译:食用油已被广泛用于将热量从锅中传导到食物上,以便油炸食物以影响其味道,颜色和质地。反复暴露在高温下会降低食用油的质量。此外,危险的化学反应可能会影响食用该化学物质的人类健康。食用油的质量可以从其颜色和清晰度直观地检测出来。在这项研究中,设计了一种嵌入式系统,可根据其视觉特性检测食用油的使用频率。所提出的系统使用颜色和光电二极管传感器来提取食用油的视觉信息。然后,在嵌入式系统平台上实现了k-最近邻算法(k-Nearest Neighbor,k-NN),以将食用油预测和分类为5类。有49个数据集被用作训练数据集。使用10倍交叉验证过程,因其最小的误分类误差而选择了k = 3。最后,使用真实数据测试对系统进行了测试,同时测量了其计算时间性能。结果显示20个测试数据的分类准确度为100%,平均而言,k-NN在Arduino UNO板上执行分类需要24.25毫秒。

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