Research Article
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Year 2025, Volume: 31 Issue: 4, 960 - 980, 30.09.2025
https://doi.org/10.15832/ankutbd.1568929

Abstract

Project Number

No Funding

References

  • Abuhayi B M & Mossa A A (2023). Coffee disease classification using Convolutional Neural Network based on feature concatenation. Informatics in Medicine Unlocked, 39: 101245. doi.org/10.1016/j.imu.2023.101245
  • Adelaja O & Pranggono B (2025). Leveraging Deep Learning for Real-Time Coffee Leaf Disease Identification. AgriEngineering 2025, 7, 13. doi.org/10.3390/agriengineering7010013
  • Ali A M, Słowik A, Hezam I M & Abdel-Basset M (2024). Sustainable smart system for vegetables plant disease detection: Four vegetable case studies. Computers and Electronics in Agriculture, 227, 109672. doi.org/10.1016/j.compag.2024.109672
  • Apraez L S C, Pino A F S, Ossa A, Vasquez C I, Solarte J D, Cabrera E V R, & Ruiz S E (2025). Application of Spectral Imaging and Vegetation Index in Latin American Coffee Production: A Systematic Mapping. Land Degradation & Development, 36(2), 337-349. doi.org/10.1002/ldr.5373
  • Baiju B V, Kirupanithi N, Srinivasan S, Kapoor A, Mathivanan S K, & Shah M A (2025). Robust CRW crops leaf disease detection and classification in agriculture using hybrid deep learning models. Plant Methods, 21, 18. doi.org/10.1186/s13007-025-01332-5
  • Barman U, Sarma P, Rahman M, Deka V, Lahkar S, Sharma V, & Saikia M J (2024). Vit-SmartAgri: vision transformer and smartphone-based plant disease detection for smart agriculture. Agronomy, 14(2), 327. doi.org/10.3390/agronomy14020327 Belciug S (2022). Learning deep neural networks' architectures using differential evolution. Case study: medical imaging processing. Computers in biology and medicine 146: 105623. doi.org/10.1016/j.compbiomed.2022.105623
  • Bera A, Bhattacharjee D & Krejcar O (2024). PND-Net: plant nutrition deficiency and disease classification using graph convolutional network. Scientific Reports, 14(1), 15537. doi.org/10.1038/s41598-024-66543-7
  • Bhagat M & Kumar D (2023). Efficient feature selection using BoWs and SURF method for leaf disease identification. Multimedia Tools and Applications 82: 28187–28211. doi.org/10.1007/s11042-023-14625-5
  • Bidarakundi P M & Kumar B M (2024). Coffee-Net: Deep Mobile Patch Generation Network for Coffee Leaf Disease Classification. IEEE Sensors Journal. doi.org/10.1109/jsen.2024.3498050
  • Chug, A, Bhatia A, Singh A P & Singh D (2023). A novel framework for image-based plant disease detection using hybrid deep learning approach. Soft Computing, 27(18), 13613-13638. doi.org/10.1007/s00500-022-07177-7 de Oliveira Aparecido L E, Lorençone P A, Lorençone J A, Torsoni G B, de Lima R F, Padilha F & de Souza Rolim G (2024). Addressing coffee crop diseases: forecasting Phoma leaf spot with machine learning. Theoretical and Applied Climatology 155(3): 2261-2282. doi.org/10.1007/s00704-023-04739-z
  • de Souza Dias J, Sorte L X B, Fambrini F & Saito J H (2025, February). Coffee plant disease detection using JSEG segmentation and near sets clustering. In Fifth Symposium on Pattern Recognition and Applications (SPRA 2024) (Vol. 13540, pp. 40-52). SPIE. doi.org/10.1117/12.3056434
  • Demilie W B (2024). Plant disease detection and classification techniques: a comparative study of the performances. Journal of Big Data 11(1): 5. doi.org/10.1186/s40537-023-00863-9
  • Dosset A, Dang L M, Alharbi F, Habib S, Alam N, Park H Y & Moon H (2025). Cassava disease detection using a lightweight modified soft attention network. Pest Management Science, 81(2), 607-617. doi.org/10.1002/ps.8456
  • Duhan S, Gulia P, Gill N S & Narwal E (2025). RTR_Lite_MobileNetV2: A Lightweight and Efficient Model for Plant Disease Detection and Classification. Current Plant Biology, 100459. doi.org/10.1016/j.cpb.2025.100459
  • Faisal M, Leu J S & Darmawan J T (2023). Model selection of hybrid feature fusion for coffee leaf disease classification. IEEE Access, 11: 62281-62291. doi.org/10.1109/access.2023.3286935
  • Haridasan A, Thomas J, & Raj E D (2023). Deep learning system for paddy plant disease detection and classification. Environmental monitoring and assessment, 195(1), 120. doi.org/10.1007/s10661-022-10656-x
  • Hasan R I, Yusuf S M, Mohd Rahim M S & Alzubaidi L (2023). Automatic clustering and classification of coffee leaf diseases based on an extended kernel density estimation approach. Plants, 12(8), 1603. doi.org/10.3390/plants12081603
  • He K, Zhang X, Ren S & Sun J (2016). Deep residual learning for image recognition. In Proceedings of the IEEE conference on computer vision and pattern recognition (pp. 770-778). doi.org/10.1109/cvpr.2016.90
  • Hitimana E, Sinayobye O J, Ufitinema J C, Mukamugema J, Rwibasira P, Murangira T & Ngabonziza J (2023). An intelligent system-based coffee plant leaf disease recognition using deep learning techniques on Rwandan Arabica dataset. Technologies, 11(5), 116. doi.org/10.3390/technologies11050116
  • Iandola F N, Han S, Moskewicz M W, Ashraf K, Dally W J & Keutzer K (2016). SqueezeNet: AlexNet-level accuracy with 50x fewer parameters and< 0.5 MB model size. arXiv preprint arXiv:1602.07360.
  • Idress K A D, Gadalla O A A, Öztekin Y B & Baitu G P (2024). Machine Learning-based for Automatic Detection of Corn-Plant Diseases Using Image Processing. Journal of Agricultural Sciences (Tarim Bilimleri Dergisi), 30(3), 464-476. doi.org/10.15832/ankutbd.1288298
  • Karia A J, Ally J S & Leonard S (2025). Enhancing Coffee Leaf Rust Detection Using DenseNet201: A Comprehensive Analysis of the Mbozi and Public Datasets in Songwe, Tanzania: English. African Journal of Empirical Research, 6(1), 171-188. doi.org/10.51867/ajernet.6.1.17
  • Karthik R, Alfred J J & Kennedy J J (2023). Inception-based global context attention network for the classification of coffee leaf diseases. Ecological Informatics, 77, 102213. doi.org/10.1016/j.ecoinf.2023.102213
  • Krizhevsky A, Sutskever I & Hinton G E (2017). ImageNet classification with deep convolutional neural networks. Communications of the ACM, 60(6), 84-90.. doi.org/10.1145/3065386
  • Ma N, Zhang X, Zheng H T & Sun J (2018). Shufflenet v2: Practical guidelines for efficient cnn architecture design. In Proceedings of the European conference on computer vision (ECCV) (pp. 116-131).
  • Milke E B, Gebiremariam M T & Salau A O (2023). Development of a coffee wilt disease identification model using deep learning. Informatics in Medicine Unlocked, 42, 101344. doi.org/10.1016/j.imu.2023.101344
  • Nawaz M, Nazir T, Javed A, Amin S T, Jeribi F & Tahir A (2024). CoffeeNet: A deep learning approach for coffee plant leaves diseases recognition. Expert Systems with Applications, 237, 121481. doi.org/10.1016/j.eswa.2023.121481
  • Pham T C, Le C H, Packianather M & Hoang V D (2023, December). Artificial intelligence-based solutions for coffee leaf disease classification. In IOP Conference Series: Earth and Environmental Science (Vol. 1278, No. 1, p. 012004). IOP Publishing. doi.org/10.1088/1755-1315/1278/1/012004
  • Pillaca‐Pullo O S, Moreni Lopes A, Bautista‐Cruz N & Estela‐Escalante W (2025). From coffee waste to nutritional gold: bioreactor cultivation of single‐cell protein from Candida sorboxylosa. Journal of Chemical Technology & Biotechnology, 100(2), 360-368. doi.org/10.1002/jctb.7778
  • Preethi P, Swathika R, Kaliraj S, Premkumar R & Yogapriya J (2024). Deep Learning–Based Enhanced Optimization for Automated Rice Plant Disease Detection and Classification. Food and Energy Security, 13(5), e70001. doi.org/10.1002/fes3.70001
  • Raghavendra B K (2023). An Efficient Approach for Coffee Leaf Disease Classification and Severity Prediction. International Journal of Intelligent Engineering & Systems, 16(5). doi.org/10.22266/ijies2023.1031.59
  • Rahman K N, Banik S C, Islam R & Al Fahim A (2025). A real time monitoring system for accurate plant leaves disease detection using deep learning. Crop Design, 4(1), 100092. doi.org/10.1016/j.cropd.2024.100092
  • Ramamurthy K, Thekkath R D, Batra S & Chattopadhyay S (2023). A novel deep learning architecture for disease classification in Arabica coffee plants. Concurrency and Computation: Practice and Experience, 35(8), e7625. doi.org/10.1002/cpe.7625
  • Rezaei M, Diepeveen D, Laga H, Gupta S, Jones M G & Sohel F (2025). A transformer-based few-shot learning pipeline for barley disease detection from field-collected imagery. Computers and electronics in agriculture, 229, 109751. doi.org/10.1016/j.compag.2024.109751
  • Salamai A A (2024). Towards automated, efficient, and interpretable diagnosis coffee leaf disease: A dual-path visual transformer network. Expert Systems with Applications, 255, 124490. doi.org/10.1016/j.eswa.2024.124490 Sandhiya B & Raja S K S (2024). Deep learning and optimized learning machine for brain tumor classification. Biomedical Signal Processing and Control, 89, 105778. doi.org/10.1016/j.bspc.2023.105778
  • Sandler M Howard A, Zhu M, Zhmoginov A & Chen L C (2018). Mobilenetv2: Inverted residuals and linear bottlenecks. In 2018 IEEE Conference on Computer Vision and Pattern Recognition, CVPR 2018, Salt Lake City, UT, USA, June 18–22, 2018, 4510–4520 (Computer Vision Foundation/IEEE Computer Society, 2018). doi.org/10.1109/cvpr.2018.00474
  • Sankareshwaran S P, Jayaraman G, Muthukumar P & Krishnan A (2023). Optimizing rice plant disease detection with crossover boosted artificial hummingbird algorithm based AX-RetinaNet. Environmental Monitoring and Assessment, 195(9), 1070. doi.org/10.1007/s10661-023-11612-z
  • Saygılı A (2023). The efficiency of transfer learning and data augmentation in lemon leaf image classification. European Journal of Engineering and Applied Sciences 6(1): 32-40. doi.org/10.55581/ejeas.1321042
  • Shovon M S H, Mozumder S J, Pal O K, Mridha M F, Asai N & Shin J (2023). PlantDet: A robust multi-model ensemble method based on deep learning for plant disease detection. IEEE Access, 11, 34846-34859. doi.org/10.1109/access.2023.3264835
  • Shrma V S T & Rahiman M K (2024). A comparison of CNN and SVM algorithms for the prediction of growth defects in coffee plants for stable yield and fungal diseases. Interactions, 245(1), 322. doi.org/10.1007/s10751-024-02135-1 Singh M K & Kumar A (2024). Coffee Leaf Disease Classification by Using a Hybrid Deep Convolution Neural Network. SN Computer Science, 5(5), 618. doi.org/10.1007/s42979-024-02960-9
  • Sofuoğlu C İ & Bırant D (2023). Using convolutional neural network for grape plant disease classification. Uludağ Üniversitesi Mühendislik Fakültesi Dergisi, 28(3), 809-820. doi.org/10.17482/uumfd.1277418
  • Sofuoğlu C İ & Bırant D (2024). Potato plant leaf disease detection using deep learning method. Journal of Agricultural Sciences (Tarim Bilimleri Dergisi), 30(1), 153-165. doi.org/10.15832/ankutbd.1276722
  • Thakur D, Gera T, Aggarwal A, Verma M, Kaur M, Singh D & Amoon M (2024). SUNet: Coffee Leaf Disease Detection using Hybrid Deep Learning Model. IEEE Access. doi.org/10.1109/access.2024.3476211
  • Tsigkou K, Demissie B A, Hashim S, Ghofrani-Isfahani P, Thomas R, Mapinga K F & Angelidaki I (2025). Coffee processing waste: Unlocking opportunities for sustainable development. Renewable and Sustainable Energy Reviews, 210, 115263. doi.org/10.1016/j.rser.2024.115263
  • Tuesta-Monteza V A, Mejia-Cabrera H I & Arcila-Diaz J (2023). CoLeaf-DB: Peruvian coffee leaf images dataset for coffee leaf nutritional deficiencies detection and classification. Data in Brief, 48, 109226. doi.org/10.1016/j.dib.2023.109226 Upadhyay A, Chandel N S, Singh K P, Chakraborty S K, Nandede B M, Kumar M & Elbeltagi A (2025). Deep learning and computer vision in plant disease detection: a comprehensive review of techniques, models, and trends in precision agriculture. Artificial Intelligence Review, 58(3), 1-64. doi.org/10.1007/s10462-024-11100-x
  • Wang S H & Zhang Y D (2020). DenseNet-201-based deep neural network with composite learning factor and precomputation for multiple sclerosis classification. ACM Transactions on Multimedia Computing, Communications, and Applications (TOMM), 16(2s), 1-19. doi.org/10.1145/3341095
  • Wang X & Liu J (2025). TomatoGuard-YOLO: a novel efficient tomato disease detection method. Frontiers in Plant Science, 15, 1499278. doi.org/10.3389/fpls.2024.1499278
  • Wang Y, Yu X & Zhang W (2025). An improved reinforcement learning-based differential evolution algorithm for combined economic and emission dispatch problems. Engineering Applications of Artificial Intelligence, 140, 109709. doi.org/10.1016/j.engappai.2024.109709
  • Yamashita J V Y B & Leite J P R (2023). Coffee disease classification at the edge using deep learning. Smart Agricultural Technology, 4, 100183. doi.org/10.1016/j.atech.2023.100183
  • Yazdani M, Kabirifar K & Haghani M (2024). Optimising post-disaster waste collection by a deep learning-enhanced differential evolution approach. Engineering Applications of Artificial Intelligence, 132, 107932. doi.org/10.1016/j.engappai.2024.107932

A Deep Learning Model for Detection and Classification of Nutritional Deficiency in Coffee Plant

Year 2025, Volume: 31 Issue: 4, 960 - 980, 30.09.2025
https://doi.org/10.15832/ankutbd.1568929

Abstract

Coffee is one of the most popular beverages consumed worldwide and is also an important economic driver in agricultural economies. However, nutritional deficiencies in coffee plants have a major effect on the quality and yield of the crop. Detection of these deficiencies early and accurately is critical for effective intervention and management. In this work, we introduce a novel deep-learning framework for detection and classification of nutritional deficiencies in coffee plants. DenseNet-201, AlexNet, and MobileNet-V2 are integrated to extract discriminative features from coffee leaf images, and an attention-based feature fusion mechanism is proposed using squeeze-and-excitation blocks to improve feature representation. A differential evolution algorithm is used to optimize a Kernel extreme learning machine for learning efficiency and generalization to classify the extracted features. A benchmark dataset is used for the evaluation of the proposed model and its performance is assessed against multiple performance metrics such as accuracy, precision, recall, specificity, F1-score, and the Matthews correlation coefficient. The proposed method is compared with existing deep learning models, and it is found that the proposed method outperforms the other models with a classification accuracy of 99.50%, precision of 99.22%, recall of 99.24%, specificity of 0.9947, F1-score of 0.9957, and M correlation coefficient of 0.9908. The model is able to identify nutritional deficiencies accurately, and these results confirm the model’s effectiveness as a practical and scalable solution for precision agriculture and sustainable coffee cultivation.

Ethical Statement

Not Applicable

Project Number

No Funding

References

  • Abuhayi B M & Mossa A A (2023). Coffee disease classification using Convolutional Neural Network based on feature concatenation. Informatics in Medicine Unlocked, 39: 101245. doi.org/10.1016/j.imu.2023.101245
  • Adelaja O & Pranggono B (2025). Leveraging Deep Learning for Real-Time Coffee Leaf Disease Identification. AgriEngineering 2025, 7, 13. doi.org/10.3390/agriengineering7010013
  • Ali A M, Słowik A, Hezam I M & Abdel-Basset M (2024). Sustainable smart system for vegetables plant disease detection: Four vegetable case studies. Computers and Electronics in Agriculture, 227, 109672. doi.org/10.1016/j.compag.2024.109672
  • Apraez L S C, Pino A F S, Ossa A, Vasquez C I, Solarte J D, Cabrera E V R, & Ruiz S E (2025). Application of Spectral Imaging and Vegetation Index in Latin American Coffee Production: A Systematic Mapping. Land Degradation & Development, 36(2), 337-349. doi.org/10.1002/ldr.5373
  • Baiju B V, Kirupanithi N, Srinivasan S, Kapoor A, Mathivanan S K, & Shah M A (2025). Robust CRW crops leaf disease detection and classification in agriculture using hybrid deep learning models. Plant Methods, 21, 18. doi.org/10.1186/s13007-025-01332-5
  • Barman U, Sarma P, Rahman M, Deka V, Lahkar S, Sharma V, & Saikia M J (2024). Vit-SmartAgri: vision transformer and smartphone-based plant disease detection for smart agriculture. Agronomy, 14(2), 327. doi.org/10.3390/agronomy14020327 Belciug S (2022). Learning deep neural networks' architectures using differential evolution. Case study: medical imaging processing. Computers in biology and medicine 146: 105623. doi.org/10.1016/j.compbiomed.2022.105623
  • Bera A, Bhattacharjee D & Krejcar O (2024). PND-Net: plant nutrition deficiency and disease classification using graph convolutional network. Scientific Reports, 14(1), 15537. doi.org/10.1038/s41598-024-66543-7
  • Bhagat M & Kumar D (2023). Efficient feature selection using BoWs and SURF method for leaf disease identification. Multimedia Tools and Applications 82: 28187–28211. doi.org/10.1007/s11042-023-14625-5
  • Bidarakundi P M & Kumar B M (2024). Coffee-Net: Deep Mobile Patch Generation Network for Coffee Leaf Disease Classification. IEEE Sensors Journal. doi.org/10.1109/jsen.2024.3498050
  • Chug, A, Bhatia A, Singh A P & Singh D (2023). A novel framework for image-based plant disease detection using hybrid deep learning approach. Soft Computing, 27(18), 13613-13638. doi.org/10.1007/s00500-022-07177-7 de Oliveira Aparecido L E, Lorençone P A, Lorençone J A, Torsoni G B, de Lima R F, Padilha F & de Souza Rolim G (2024). Addressing coffee crop diseases: forecasting Phoma leaf spot with machine learning. Theoretical and Applied Climatology 155(3): 2261-2282. doi.org/10.1007/s00704-023-04739-z
  • de Souza Dias J, Sorte L X B, Fambrini F & Saito J H (2025, February). Coffee plant disease detection using JSEG segmentation and near sets clustering. In Fifth Symposium on Pattern Recognition and Applications (SPRA 2024) (Vol. 13540, pp. 40-52). SPIE. doi.org/10.1117/12.3056434
  • Demilie W B (2024). Plant disease detection and classification techniques: a comparative study of the performances. Journal of Big Data 11(1): 5. doi.org/10.1186/s40537-023-00863-9
  • Dosset A, Dang L M, Alharbi F, Habib S, Alam N, Park H Y & Moon H (2025). Cassava disease detection using a lightweight modified soft attention network. Pest Management Science, 81(2), 607-617. doi.org/10.1002/ps.8456
  • Duhan S, Gulia P, Gill N S & Narwal E (2025). RTR_Lite_MobileNetV2: A Lightweight and Efficient Model for Plant Disease Detection and Classification. Current Plant Biology, 100459. doi.org/10.1016/j.cpb.2025.100459
  • Faisal M, Leu J S & Darmawan J T (2023). Model selection of hybrid feature fusion for coffee leaf disease classification. IEEE Access, 11: 62281-62291. doi.org/10.1109/access.2023.3286935
  • Haridasan A, Thomas J, & Raj E D (2023). Deep learning system for paddy plant disease detection and classification. Environmental monitoring and assessment, 195(1), 120. doi.org/10.1007/s10661-022-10656-x
  • Hasan R I, Yusuf S M, Mohd Rahim M S & Alzubaidi L (2023). Automatic clustering and classification of coffee leaf diseases based on an extended kernel density estimation approach. Plants, 12(8), 1603. doi.org/10.3390/plants12081603
  • He K, Zhang X, Ren S & Sun J (2016). Deep residual learning for image recognition. In Proceedings of the IEEE conference on computer vision and pattern recognition (pp. 770-778). doi.org/10.1109/cvpr.2016.90
  • Hitimana E, Sinayobye O J, Ufitinema J C, Mukamugema J, Rwibasira P, Murangira T & Ngabonziza J (2023). An intelligent system-based coffee plant leaf disease recognition using deep learning techniques on Rwandan Arabica dataset. Technologies, 11(5), 116. doi.org/10.3390/technologies11050116
  • Iandola F N, Han S, Moskewicz M W, Ashraf K, Dally W J & Keutzer K (2016). SqueezeNet: AlexNet-level accuracy with 50x fewer parameters and< 0.5 MB model size. arXiv preprint arXiv:1602.07360.
  • Idress K A D, Gadalla O A A, Öztekin Y B & Baitu G P (2024). Machine Learning-based for Automatic Detection of Corn-Plant Diseases Using Image Processing. Journal of Agricultural Sciences (Tarim Bilimleri Dergisi), 30(3), 464-476. doi.org/10.15832/ankutbd.1288298
  • Karia A J, Ally J S & Leonard S (2025). Enhancing Coffee Leaf Rust Detection Using DenseNet201: A Comprehensive Analysis of the Mbozi and Public Datasets in Songwe, Tanzania: English. African Journal of Empirical Research, 6(1), 171-188. doi.org/10.51867/ajernet.6.1.17
  • Karthik R, Alfred J J & Kennedy J J (2023). Inception-based global context attention network for the classification of coffee leaf diseases. Ecological Informatics, 77, 102213. doi.org/10.1016/j.ecoinf.2023.102213
  • Krizhevsky A, Sutskever I & Hinton G E (2017). ImageNet classification with deep convolutional neural networks. Communications of the ACM, 60(6), 84-90.. doi.org/10.1145/3065386
  • Ma N, Zhang X, Zheng H T & Sun J (2018). Shufflenet v2: Practical guidelines for efficient cnn architecture design. In Proceedings of the European conference on computer vision (ECCV) (pp. 116-131).
  • Milke E B, Gebiremariam M T & Salau A O (2023). Development of a coffee wilt disease identification model using deep learning. Informatics in Medicine Unlocked, 42, 101344. doi.org/10.1016/j.imu.2023.101344
  • Nawaz M, Nazir T, Javed A, Amin S T, Jeribi F & Tahir A (2024). CoffeeNet: A deep learning approach for coffee plant leaves diseases recognition. Expert Systems with Applications, 237, 121481. doi.org/10.1016/j.eswa.2023.121481
  • Pham T C, Le C H, Packianather M & Hoang V D (2023, December). Artificial intelligence-based solutions for coffee leaf disease classification. In IOP Conference Series: Earth and Environmental Science (Vol. 1278, No. 1, p. 012004). IOP Publishing. doi.org/10.1088/1755-1315/1278/1/012004
  • Pillaca‐Pullo O S, Moreni Lopes A, Bautista‐Cruz N & Estela‐Escalante W (2025). From coffee waste to nutritional gold: bioreactor cultivation of single‐cell protein from Candida sorboxylosa. Journal of Chemical Technology & Biotechnology, 100(2), 360-368. doi.org/10.1002/jctb.7778
  • Preethi P, Swathika R, Kaliraj S, Premkumar R & Yogapriya J (2024). Deep Learning–Based Enhanced Optimization for Automated Rice Plant Disease Detection and Classification. Food and Energy Security, 13(5), e70001. doi.org/10.1002/fes3.70001
  • Raghavendra B K (2023). An Efficient Approach for Coffee Leaf Disease Classification and Severity Prediction. International Journal of Intelligent Engineering & Systems, 16(5). doi.org/10.22266/ijies2023.1031.59
  • Rahman K N, Banik S C, Islam R & Al Fahim A (2025). A real time monitoring system for accurate plant leaves disease detection using deep learning. Crop Design, 4(1), 100092. doi.org/10.1016/j.cropd.2024.100092
  • Ramamurthy K, Thekkath R D, Batra S & Chattopadhyay S (2023). A novel deep learning architecture for disease classification in Arabica coffee plants. Concurrency and Computation: Practice and Experience, 35(8), e7625. doi.org/10.1002/cpe.7625
  • Rezaei M, Diepeveen D, Laga H, Gupta S, Jones M G & Sohel F (2025). A transformer-based few-shot learning pipeline for barley disease detection from field-collected imagery. Computers and electronics in agriculture, 229, 109751. doi.org/10.1016/j.compag.2024.109751
  • Salamai A A (2024). Towards automated, efficient, and interpretable diagnosis coffee leaf disease: A dual-path visual transformer network. Expert Systems with Applications, 255, 124490. doi.org/10.1016/j.eswa.2024.124490 Sandhiya B & Raja S K S (2024). Deep learning and optimized learning machine for brain tumor classification. Biomedical Signal Processing and Control, 89, 105778. doi.org/10.1016/j.bspc.2023.105778
  • Sandler M Howard A, Zhu M, Zhmoginov A & Chen L C (2018). Mobilenetv2: Inverted residuals and linear bottlenecks. In 2018 IEEE Conference on Computer Vision and Pattern Recognition, CVPR 2018, Salt Lake City, UT, USA, June 18–22, 2018, 4510–4520 (Computer Vision Foundation/IEEE Computer Society, 2018). doi.org/10.1109/cvpr.2018.00474
  • Sankareshwaran S P, Jayaraman G, Muthukumar P & Krishnan A (2023). Optimizing rice plant disease detection with crossover boosted artificial hummingbird algorithm based AX-RetinaNet. Environmental Monitoring and Assessment, 195(9), 1070. doi.org/10.1007/s10661-023-11612-z
  • Saygılı A (2023). The efficiency of transfer learning and data augmentation in lemon leaf image classification. European Journal of Engineering and Applied Sciences 6(1): 32-40. doi.org/10.55581/ejeas.1321042
  • Shovon M S H, Mozumder S J, Pal O K, Mridha M F, Asai N & Shin J (2023). PlantDet: A robust multi-model ensemble method based on deep learning for plant disease detection. IEEE Access, 11, 34846-34859. doi.org/10.1109/access.2023.3264835
  • Shrma V S T & Rahiman M K (2024). A comparison of CNN and SVM algorithms for the prediction of growth defects in coffee plants for stable yield and fungal diseases. Interactions, 245(1), 322. doi.org/10.1007/s10751-024-02135-1 Singh M K & Kumar A (2024). Coffee Leaf Disease Classification by Using a Hybrid Deep Convolution Neural Network. SN Computer Science, 5(5), 618. doi.org/10.1007/s42979-024-02960-9
  • Sofuoğlu C İ & Bırant D (2023). Using convolutional neural network for grape plant disease classification. Uludağ Üniversitesi Mühendislik Fakültesi Dergisi, 28(3), 809-820. doi.org/10.17482/uumfd.1277418
  • Sofuoğlu C İ & Bırant D (2024). Potato plant leaf disease detection using deep learning method. Journal of Agricultural Sciences (Tarim Bilimleri Dergisi), 30(1), 153-165. doi.org/10.15832/ankutbd.1276722
  • Thakur D, Gera T, Aggarwal A, Verma M, Kaur M, Singh D & Amoon M (2024). SUNet: Coffee Leaf Disease Detection using Hybrid Deep Learning Model. IEEE Access. doi.org/10.1109/access.2024.3476211
  • Tsigkou K, Demissie B A, Hashim S, Ghofrani-Isfahani P, Thomas R, Mapinga K F & Angelidaki I (2025). Coffee processing waste: Unlocking opportunities for sustainable development. Renewable and Sustainable Energy Reviews, 210, 115263. doi.org/10.1016/j.rser.2024.115263
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There are 50 citations in total.

Details

Primary Language English
Subjects Agricultural Automatization
Journal Section Makaleler
Authors

Umarani Chellamanı 0009-0000-7319-9602

Baskaran Kaliaperumal This is me 0000-0003-3088-732X

Project Number No Funding
Publication Date September 30, 2025
Submission Date October 17, 2024
Acceptance Date May 14, 2025
Published in Issue Year 2025 Volume: 31 Issue: 4

Cite

APA Chellamanı, U., & Kaliaperumal, B. (2025). A Deep Learning Model for Detection and Classification of Nutritional Deficiency in Coffee Plant. Journal of Agricultural Sciences, 31(4), 960-980. https://doi.org/10.15832/ankutbd.1568929
AMA Chellamanı U, Kaliaperumal B. A Deep Learning Model for Detection and Classification of Nutritional Deficiency in Coffee Plant. J Agr Sci-Tarim Bili. September 2025;31(4):960-980. doi:10.15832/ankutbd.1568929
Chicago Chellamanı, Umarani, and Baskaran Kaliaperumal. “A Deep Learning Model for Detection and Classification of Nutritional Deficiency in Coffee Plant”. Journal of Agricultural Sciences 31, no. 4 (September 2025): 960-80. https://doi.org/10.15832/ankutbd.1568929.
EndNote Chellamanı U, Kaliaperumal B (September 1, 2025) A Deep Learning Model for Detection and Classification of Nutritional Deficiency in Coffee Plant. Journal of Agricultural Sciences 31 4 960–980.
IEEE U. Chellamanı and B. Kaliaperumal, “A Deep Learning Model for Detection and Classification of Nutritional Deficiency in Coffee Plant”, J Agr Sci-Tarim Bili, vol. 31, no. 4, pp. 960–980, 2025, doi: 10.15832/ankutbd.1568929.
ISNAD Chellamanı, Umarani - Kaliaperumal, Baskaran. “A Deep Learning Model for Detection and Classification of Nutritional Deficiency in Coffee Plant”. Journal of Agricultural Sciences 31/4 (September2025), 960-980. https://doi.org/10.15832/ankutbd.1568929.
JAMA Chellamanı U, Kaliaperumal B. A Deep Learning Model for Detection and Classification of Nutritional Deficiency in Coffee Plant. J Agr Sci-Tarim Bili. 2025;31:960–980.
MLA Chellamanı, Umarani and Baskaran Kaliaperumal. “A Deep Learning Model for Detection and Classification of Nutritional Deficiency in Coffee Plant”. Journal of Agricultural Sciences, vol. 31, no. 4, 2025, pp. 960-8, doi:10.15832/ankutbd.1568929.
Vancouver Chellamanı U, Kaliaperumal B. A Deep Learning Model for Detection and Classification of Nutritional Deficiency in Coffee Plant. J Agr Sci-Tarim Bili. 2025;31(4):960-8.

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