Litcius/Paper detail

DFNet: Dense fusion convolution neural network for plant leaf disease classification

Muhamad Faisal, Jenq‐Shiou Leu, Cries Avian, Setya Widyawan Prakosa, Mario Köppen

2023Agronomy Journal32 citationsDOIOpen Access PDF

Abstract

Abstract The early identification of plant diseases is crucial for preventing the loss of crop production. Recently, the advancement of deep learning has significantly improved the identification of plant leaf diseases. However, most approaches depend on a single convolutional neural network (CNN) to extract the leaf features, ignoring the opportunity to take full advantage of the feature richness available in the images. This paper explores a novel CNN model with multiple automated feature extractors, namely, dense fusion CNN (DFNet), for classifying plant leaf diseases. DFNet aims to increase the diversity of extracted features in order to improve discrimination. Instead of using a single‐CNN model, DFNet relies on a double‐pretrained CNN model, MobileNetV2 and NASNetMobile, as the feature extractor. The features extracted from each CNN are fused in the fusion layer using a fully connected network. The proposed method was evaluated using corn ( Zea mays L.) and coffee ( Coffea canephora ) leaf disease datasets and compared to the existing models. The experiment showed that DFNet is superior and consistent to other CNN methods by achieving an accuracy of 97.53% for corn leaf diseases and 94.65% for coffee leaf diseases.

Topics & Concepts

Convolutional neural networkPattern recognition (psychology)Artificial intelligenceFeature (linguistics)Computer scienceConvolution (computer science)ExtractorIdentification (biology)Plant identificationDeep learningArtificial neural networkBotanyBiologyProcess engineeringPhilosophyLinguisticsEngineeringSmart Agriculture and AIPlant Disease Management TechniquesLeaf Properties and Growth Measurement