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Machine Learning Methods for Assessing Freshness in Hydroponic Produce

机译:评估水培产品新鲜度的机器学习方法

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Smart farms are increasing in both number and level of technology used. Image processing had been applied to hydroponic farms to detect disease in plants, but detecting the freshness of vegetable had not been addressed as much. In this work we applied image processing and machine learning technologies to the task of distinguishing between fresh and withered vegetable. We compared 3 classical machine learning classifier: decision tree, Naive Bayes, Multi-Layer Perceptron; and one type of deep neural network. Manual feature extraction was performed for the classical machine learning, while the input to the deep neural network was the raw images. We collected the data by taking one image of the vegetable every 10 minutes for one week each time. We labeled the data by considering vegetable from day 1 and day 2 to be fresh while from day 3 onward was considered wither. Experiment results show that the best model for this task was decision tree with a test accuracy of 98.12%. Deep neural network did not perform as well as expected. We hypothesize that the reason is due to overfitting of the training data since the training accuracy for deep neural network was as high or even higher than other classifiers.
机译:智能农场的使用数量和技术水平都在提高。图像处理已应用于水耕农场,以检测植物中的疾病,但是检测蔬菜的新鲜度尚未得到足够的重视。在这项工作中,我们将图像处理和机器学习技术应用于区分新鲜蔬菜和枯萎蔬菜的任务。我们比较了3种经典的机器学习分类器:决策树,朴素贝叶斯,多层感知器;和一种类型的深度神经网络。手动特征提取是针对经典机器学习执行的,而深度神经网络的输入是原始图像。我们通过每10分钟拍摄一次蔬菜的图像来收集数据,每次使用一周。我们通过考虑第1天和第2天的蔬菜是新鲜的而标记了数据,而从第3天起则被认为是枯萎的。实验结果表明,该任务的最佳模型是决策树,测试准确度为98.12%。深度神经网络的性能不及预期。我们假设原因是由于深度神经网络的训练精度与其他分类器一样高甚至更高,因此训练数据过拟合。

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