Rice is the number one staple food in the country, as this serves as the primary livelihood for thousands of Filipino households. However, as the tradition continues, farmers are not familiar with the different types of rice leaf diseases that might compromise the entire rice crop. The need to address the common bacterial leaf blight in rice is a serious disease that can lead to reduced yields and even crop loss of up to 75%. This paper is a design and development of a rice leaf disease detection mobile application prototype using an algorithm used for image analysis. The researchers also used the Rice Disease Image Dataset by Huy Minh Do available at https://www.kaggle.com/ to train state-of-the-art convolutional neural networks using transfer learning. Moreover, we used image augmentation to increase the number of image samples and the accuracy of the neural networks as well
翻译:稻米是菲律宾国内头号主食,是成千上万菲律宾家庭的主要生计。然而,随着传统的延续,农民并不熟悉可能损害整个水稻作物的不同类型的稻叶疾病。需要解决大米中常见的细菌叶病是一种严重的疾病,可能导致产量下降,甚至作物损失高达75%。本文是利用用于图像分析的算法设计和开发米叶疾病检测移动应用原型。研究人员还利用Huy Minh Do的稻米疾病图像数据集,可在https://www.kaggle.com/上查阅,以便利用转移学习来培训最先进的共生神经网络。此外,我们利用图像增强来增加图像样本的数量和神经网络的准确性。