Publication | Open Access
Plant Disease Classification: A Comparative Evaluation of Convolutional Neural Networks and Deep Learning Optimizers
234
Citations
31
References
2020
Year
Convolutional Neural NetworkEngineeringMachine LearningBotanyAi FoundationAgricultural EconomicsPlant PathologyPlant Disease ClassificationPlant HealthPhenomicsImage ClassificationImage AnalysisPattern RecognitionBiostatisticsPublic HealthComparative AnalysisMachine Learning ModelDeep LearningNeural Architecture SearchDeep Neural NetworksCrop ProtectionConvolutional Neural NetworksDeep Learning Optimizers
Recently, plant disease classification has been done by various state-of-the-art deep learning (DL) architectures on the publicly available/author generated datasets. This research proposed the deep learning-based comparative evaluation for the classification of plant disease in two steps. Firstly, the best convolutional neural network (CNN) was obtained by conducting a comparative analysis among well-known CNN architectures along with modified and cascaded/hybrid versions of some of the DL models proposed in the recent researches. Secondly, the performance of the best-obtained model was attempted to improve by training through various deep learning optimizers. The comparison between various CNNs was based on performance metrics such as validation accuracy/loss, F1-score, and the required number of epochs. All the selected DL architectures were trained in the PlantVillage dataset which contains 26 different diseases belonging to 14 respective plant species. Keras with TensorFlow backend was used to train deep learning architectures. It is concluded that the Xception architecture trained with the Adam optimizer attained the highest validation accuracy and F1-score of 99.81% and 0.9978 respectively which is comparatively better than the previous approaches and it proves the novelty of the work. Therefore, the method proposed in this research can be applied to other agricultural applications for transparent detection and classification purposes.
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