Oyewola David Opeoluwa, Dada Emmanuel Gbenga, Misra Sanjay, Damaševičius Robertas
Department of Mathematics and Computer Science, Federal University Kashere, Gombe, Nigeria.
Department of Mathematical Sciences, University of Maiduguri, Maiduguri, Nigeria.
PeerJ Comput Sci. 2021 Mar 2;7:e352. doi: 10.7717/peerj-cs.352. eCollection 2021.
For people in developing countries, cassava is a major source of calories and carbohydrates. However, Cassava Mosaic Disease (CMD) has become a major cause of concern among farmers in sub-Saharan Africa countries, which rely on cassava for both business and local consumption. The article proposes a novel deep residual convolution neural network (DRNN) for CMD detection in cassava leaf images. With the aid of distinct block processing, we can counterbalance the imbalanced image dataset of the cassava diseases and increase the number of images available for training and testing. Moreover, we adjust low contrast using Gamma correction and decorrelation stretching to enhance the color separation of an image with significant band-to-band correlation. Experimental results demonstrate that using a balanced dataset of images increases the accuracy of classification. The proposed DRNN model outperforms the plain convolutional neural network (PCNN) by a significant margin of 9.25% on the Cassava Disease Dataset from Kaggle.
对于发展中国家的人们来说,木薯是热量和碳水化合物的主要来源。然而,木薯花叶病(CMD)已成为撒哈拉以南非洲国家农民主要关注的问题,这些国家的商业和本地消费都依赖木薯。本文提出了一种用于检测木薯叶片图像中CMD的新型深度残差卷积神经网络(DRNN)。借助独特的块处理,我们可以平衡木薯病害的不平衡图像数据集,并增加可用于训练和测试的图像数量。此外,我们使用伽马校正和去相关拉伸来调整低对比度,以增强具有显著带间相关性的图像的颜色分离。实验结果表明,使用平衡的图像数据集可提高分类准确率。在来自Kaggle的木薯病害数据集上,所提出的DRNN模型比普通卷积神经网络(PCNN)的准确率显著高出9.25%。