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PND-Net: plant nutrition deficiency and disease classification using graph convolutional network

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dc.rights.license CC BY eng
dc.contributor.author Bera, A. cze
dc.contributor.author Bhattacharjee, Debotosh cze
dc.contributor.author Krejcar, Ondřej cze
dc.date.accessioned 2025-12-05T14:24:33Z
dc.date.available 2025-12-05T14:24:33Z
dc.date.issued 2024 eng
dc.identifier.issn 2045-2322 eng
dc.identifier.uri http://hdl.handle.net/20.500.12603/2133
dc.description.abstract Crop yield production could be enhanced for agricultural growth if various plant nutrition deficiencies, and diseases are identified and detected at early stages. Hence, continuous health monitoring of plant is very crucial for handling plant stress. The deep learning methods have proven its superior performances in the automated detection of plant diseases and nutrition deficiencies from visual symptoms in leaves. This article proposes a new deep learning method for plant nutrition deficiencies and disease classification using a graph convolutional network (GNN), added upon a base convolutional neural network (CNN). Sometimes, a global feature descriptor might fail to capture the vital region of a diseased leaf, which causes inaccurate classification of disease. To address this issue, regional feature learning is crucial for a holistic feature aggregation. In this work, region-based feature summarization at multi-scales is explored using spatial pyramidal pooling for discriminative feature representation. Furthermore, a GCN is developed to capacitate learning of finer details for classifying plant diseases and insufficiency of nutrients. The proposed method, called Plant Nutrition Deficiency and Disease Network (PND-Net), has been evaluated on two public datasets for nutrition deficiency, and two for disease classification using four backbone CNNs. The best classification performances of the proposed PND-Net are as follows: (a) 90.00% Banana and 90.54% Coffee nutrition deficiency; and (b) 96.18% Potato diseases and 84.30% on PlantDoc datasets using Xception backbone. Furthermore, additional experiments have been carried out for generalization, and the proposed method has achieved state-of-the-art performances on two public datasets, namely the Breast Cancer Histopathology Image Classification (BreakHis 40×: 95.50%, and BreakHis 100×: 96.79% accuracy) and Single cells in Pap smear images for cervical cancer classification (SIPaKMeD: 99.18% accuracy). Also, the proposed method has been evaluated using five-fold cross validation and achieved improved performances on these datasets. Clearly, the proposed PND-Net effectively boosts the performances of automated health analysis of various plants in real and intricate field environments, implying PND-Net’s aptness for agricultural growth as well as human cancer classification. eng
dc.format p. "Article number: 15537" eng
dc.language.iso eng eng
dc.publisher MacMillan eng
dc.relation.ispartof Scientific reports, volume 14, issue: 1 eng
dc.subject Agriculture eng
dc.subject Cancer classification eng
dc.subject Convolutional neural network eng
dc.subject Graph convolutional network eng
dc.subject Nutrition deficiency eng
dc.subject Plant disease eng
dc.subject Spatial pyramid pooling eng
dc.title PND-Net: plant nutrition deficiency and disease classification using graph convolutional network eng
dc.type article eng
dc.identifier.obd 43881187 eng
dc.identifier.doi 10.1038/s41598-024-66543-7 eng
dc.publicationstatus postprint eng
dc.peerreviewed yes eng
dc.source.url https://www.nature.com/articles/s41598-024-66543-7 cze
dc.relation.publisherversion https://www.nature.com/articles/s41598-024-66543-7 eng
dc.rights.access Open Access eng


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