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Deep Learning for Assessing Unhealthy Lettuce Hydroponic Using Convolutional Neural Network based on Faster R-CNN with Inception V2

机译:基于R-CNN的卷积神经网络评估不健康的莴苣水培评估不健康的莴苣水培基于v2

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The hydroponic system is a development of traditional farming that substitute soil as a medium plant due to land limitation. Lettuce is the most popular hydroponic vegetable product in the market. However, during harvesting, there are huge challenges to ensure product quality especially for mass production has a better quality. In this research, we utilized Deep Learning as objection detection to recognize the disease in Hydroponic vegetables by using Faster R-CNN with Inception V2 algorithm and compare the performance by divided the ratio of training and validation dataset into 3 categories i.e. 78/9, 70/17, and 61/26 with the standard testing ratio for all categories is 13%. From this study we obtain a result that ratio 78/9 have a better performance with Accuracy 70%; Precision 97%; Recall 68% and F1 Score 80% however, ratio 61/26 has the lowest performance with Accuracy 40%; Precision 24%; Recall 100% and F1 Score 38,5% from 412 images dataset with 53 testing images with default learning rate setting 0.0002. As the result shown that the testing and validation ratio was affected by the deep learning model performances.
机译:水培系统是传统农业的发展,替代由于土地限制为中等植物的土壤。莴苣是市场上最受欢迎的水培蔬菜产品。然而,在收获期间,确保产品质量特别适用于批量生产具有巨大挑战。在这项研究中,我们利用深入学习作为异药检测,通过使用速度V2算法使用更快的R-CNN来识别水培蔬菜中的疾病,并通过将训练和验证数据集的比率分成3个类别,即78/9,70 / 17,以及所有类别标准测试率的61/26为13%。从这项研究来看,我们获得的结果,比率78/9具有更好的性能,精度为70%;精度97%;召回68%和F1得分80%,比率61/26具有最低的性能,精度为40%;精度24%;从412张图像数据集召回100%和F1得分38,5%,其中包含53个测试图像,默认学习速率设置为0.0002。结果表明,测试和验证率受到深度学习模型表演的影响。

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