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An Optimized Classification Model for Coffea Liberica Disease using Deep Convolutional Neural Networks

机译:深度卷积神经网络的咖啡狼疾病优化分类模型

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The Philippines gave coffee a unique identity and taste in the form of Barako coffee, a variant that came from the species of Coffea liberica. However, the crop yielded faces a challenge in coping up with several widespread diseases leading it to lose in quantity and quality. Barako became a less prioritized crop compared to Excelsa, Robusta, and Arabica. The troublesome method of identifying diseases like rust, spots, and insect infestation caused many losses for farmers due to improper diagnosis and treatment. This research aims to apply deep learning methods to alleviate the problem. A deep convolutional neural network was optimized to perform the difficult task of classifying diseases to assist farmers in applying an appropriate treatment. With several experiments, this study develops several models to distinguish the best possible model that can yield the most accurate results. This study acquired 3958 high-resolution images to train the desired model. The result achieved a 100 percent accuracy rate while other models misclassified due to overfitting problems. Proper tuning of hyperparameters can address overfitting together with an appropriate choice of optimizers resulting in an efficient classifier. Moreover, this research identified potential future research works to apply the model for real-life scenarios.
机译:菲律宾以Barako Coffee的形式提供了独特的身份和品味,这是来自Coffea Liberica的物种的变种。然而,该作物产生面临着应对几种普遍疾病导致其数量和质量失去的挑战。与Excelsa,Robusta和Arabica相比,Barako成为一个较不优先的作物。由于诊断和治疗不当,鉴定生锈,斑点和昆虫侵扰等疾病的麻烦方法对农民产生了许多损失。本研究旨在应用深入学习方法来缓解问题。优化了深度卷积神经网络,以对分类疾病进行困难的任务,以帮助农民应用适当的治疗。通过几个实验,该研究开发了几种模型,以区分最佳模型,可以产生最准确的结果。本研究获得了3958个高分辨率图像来培训所需的模型。结果达到了100%的精度率,而其他模型因过度的问题而被错误分类。正确调整的超参数可以解决过度选择,以及适当的优化器选择,导致有效的分类器。此外,该研究确定了应用模型的潜在未来的研究,以适用于现实生活场景。

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