A Backward Regressed Capsule Neural Network for Plant Leaf Disease Detection
[摘要] This study investigated the introduction ofbackward regression coupled with DenseNet features in a Capsule Neural Network(CapsNet) for plant leaf disease classification. Plant diseases are consideredone of the main factors influencing food production and therefore fast cropdisease detection and recognition are important in enhancing food securityinterventions. CapsNets have successfully been adopted for plant leaf diseaseclassification however, backpropagation of signals to preceding layers is stilla challenge due to low gradient flow. In addition, parameter and computationalcomplexities exist due to complex features. Therefore, this study implemented aloop connectivity pattern to improve gradient flow in the convolution layer andbackward regression for feature selection. We observed a 99.7% F1 score withbackward regression and 87% F1 score without backward regression accuracy ontesting our framework based on the standard Plant Village (PV) dataset comprisingten tomato classes with 9080 images. Additionally, CapsNet with backwardregression showed relatively higher and stable accuracy when sensitivityanalysis was performed by varying testing and training dataset percentages. Incomparison Support Vector Machines (SVM), Artificial Neural Networks (ANN),AlexNet, ResNet, VGGNet, Inception V3, and VGG 16 deep learning approachesscored 84.5, 88.6, 99.3, 97.87, 99.14, and 98.2%, respectively. These findingsindicate that the introduction of backward regression of features in theCapsNet model may be a decent and, in most cases superior and less expensivealternative for phrase categorization models based on CNNs and RNNs. Therefore,the accuracy of plant disease detection may be enhanced even further with the aidof the fusion of several classifiers and the integration of a backwardregressed capsule neural network.
[发布日期] [发布机构]
[效力级别] [学科分类] 计算机科学(综合)
[关键词] DenseNet;Plant Leaf;Convolution Neural Network;Capsule Neural Network;Model Training;Deep Learning [时效性]