Yıl: 2023 Cilt: 13 Sayı: 2 Sayfa Aralığı: 792 - 814 Metin Dili: Türkçe DOI: 10.21597/jist.1265769 İndeks Tarihi: 20-06-2023

Derin Evrişimli Sinir Ağları Kullanılarak Pirinç Hastalıklarının Sınıflandırılması

Öz:
Çeltik, temel bir gıda kaynağıdır ve endüstride sıkça kullanılan nadir bitkilerden biridir. Çeltik yaprak hastalıklarının erken teşhisi, ekin hasarını en aza indirmek için büyük önem taşımaktadır. Son yıllarda, derin öğrenme tabanlı bilgisayar destekli sistemler, ziraat sektöründe oldukça önem kazanmış ve çeşitli uygulamalarda etkin rol almıştır. Bu sistemler, hastalıkların erken teşhis edilmesine yardımcı olmakla kalmayıp, aynı zamanda tarım alanında çalışanlara da ikincil bir yardımcı olarak katkı sağlamaktadır. Bu çalışma, çeltik yapraklarında bulunan hastalıkların erken teşhisinde derin öğrenme yöntemlerinin etkinliğini araştırmayı amaçlamaktadır. Bu amaç doğrultusunda, VGG, ResNet, DenseNet, EfficientNet, Inception ve Xception gibi en popüler evrişimsel sinir ağları (CNN), halka açık Paddy Doctor veri seti üzerinde değerlendirilmiştir. Her bir modele, veri ön işleme, veri artırma, hiper-parametre optimizasyonu ve öğrenme aktarımı gibi güncel teknikler uygulanarak test setindeki teşhis doğruluğunun başarımı arttırılmıştır. Ayrıca her bir mimarideki modellerin birbirine ve diğer mimarilerdeki modellere göre çeltik yapraklarındaki hastalıkların teşhisindeki başarımları detaylı bir şekilde karşılaştırılmıştır. Deneysel sonuçlar, EfficientNetv2_Small modelinin %98.01 test doğruluğu ve %97.99 F1-skor değerleriyle tüm modellerden daha iyi performans sergilediğini ve literatürdeki diğer çalışmaları geride bıraktığını göstermiştir. Bu çalışma, CNN mimarilerinin yüksek bir performans gösterdiğini ve bu tür hastalıkların erken teşhisinde ziraat mühendislerine ve çiftçilere etkili bir şekilde yardımcı olabileceğini göstermektedir
Anahtar Kelime: Bitki hastalığı sınıflandırması Pirinç hastalığı tespiti Evrişimli sinir ağları Derin öğrenme Öğrenme aktarımı

Classification Of Rice Diseases Using Deep Convolutional Neural Networks

Öz:
Rice is a primary food source and is one of the rare plants commonly used in industry. Early diagnosis of leaf diseases in rice is crucial to minimize crop damage. Recently, deep learning-based computer-aided systems have gained importance in the agricultural sector and have played an effective role in various applications. These systems not only help with early disease diagnosis but also serve as a secondary aid to those working in agriculture. This study aims to investigate the effectiveness of deep learning methods in the early diagnosis of diseases in rice leaves. To this end, the most popular convolutional neural networks (CNNs), such as VGG, ResNet, DenseNet, EfficientNet, Inception and Xception, were evaluated on the public Paddy Doctor dataset. Current techniques, such as data preprocessing, data augmentation, hyperparameter optimization, and transfer learning, were applied to each model to increase the diagnostic accuracy of the test set. Additionally, the success of each model in diagnosing diseases in rice leaves was compared in detail to other models. The experimental results showed that the EfficientNetv2_Small model performed better than all other models with a test accuracy of 98.01% and F1-score of 97.99%, outperforming other studies in the literature. This study demonstrates that CNN architectures perform well and can effectively assist agricultural engineers and farmers in the early diagnosis of such diseases
Anahtar Kelime:

Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
  • Agarwal, M., Singh, A., Arjaria, S., Sinha, A., ve Gupta, S. (2020). ToLeD: Tomato Leaf Disease Detection using Convolution Neural Network. Procedia Computer Science, 167, 293-301. https://doi.org/https://doi.org/10.1016/j.procs.2020.03.225
  • Agus, F., Ihsan, M., Khairina, D. M., ve Candra, K. P. (2019). Expert System for Rice Plant Disease Diagnosis. In: vol.
  • Akila, M., ve Deepan, P. (2018). Detection and classification of plant leaf diseases by using deep learning algorithm. International Journal of Engineering Research ve Technology (IJERT), 6(7), 1-5.
  • An, C., Sun, C., Li, N., Huang, B., Jiang, J., Shen, Y., Wang, C., Zhao, X., Cui, B., ve Wang, C. (2022). Nanomaterials and nanotechnology for the delivery of agrochemicals: strategies towards sustainable agriculture. Journal of Nanobiotechnology, 20(1), 1-19.
  • Arnal Barbedo, J. G. (2019). Plant disease identification from individual lesions and spots using deep learning. Biosystems Engineering, 180, 96-107. https://doi.org/https://doi.org/10.1016/j.biosystemseng.2019.02.002
  • Asad, M. H., ve Bais, A. (2020). Weed detection in canola fields using maximum likelihood classification and deep convolutional neural network. Information Processing in Agriculture, 7(4), 535-545. https://doi.org/https://doi.org/10.1016/j.inpa.2019.12.002
  • Athiraja, A., ve Vijayakumar, P. (2021). RETRACTED ARTICLE: Banana disease diagnosis using computer vision and machine learning methods. Journal of Ambient Intelligence and Humanized Computing, 12(6), 6537-6556.
  • Atole, R. R., ve Park, D. (2018). A multiclass deep convolutional neural network classifier for detection of common rice plant anomalies. International Journal of Advanced Computer Science and Applications, 9(1).
  • Baranwal, S., Khandelwal, S., ve Arora, A. (2019). Deep learning convolutional neural network for apple leaves disease detection. Proceedings of international conference on sustainable computing in science, technology and management (SUSCOM), Amity University Rajasthan, Jaipur-India,
  • Barbedo, J. G. A. (2016). A review on the main challenges in automatic plant disease identification based on visible range images. Biosystems Engineering, 144, 52-60.
  • Baresel, J. P., Rischbeck, P., Hu, Y., Kipp, S., Hu, Y., Barmeier, G., Mistele, B., ve Schmidhalter, U. (2017). Use of a digital camera as alternative method for non-destructive detection of the leaf chlorophyll content and the nitrogen nutrition status in wheat. Computers and Electronics in Agriculture, 140, 25-33. https://doi.org/https://doi.org/10.1016/j.compag.2017.05.032
  • Bayat, S. ve Işık, G. (2022). "Aras Kuş Türlerinin Ses Özellikleri Bakımından Derin Öğrenme Yöntemleriyle Tanınması." Journal of the Institute of Science and Technology 12(3): 1250-1263
  • Bhagawati, R., Bhagawati, K., Singh, A., Nongthombam, R., Sarmah, R., ve Bhagawati, G. (2015). Artificial neural network assisted weather based plant disease forecasting system. International Journal on Recent and Innovation Trends in Computing and Communication, 3(6), 4168-4173.
  • Brownlee, J. (2019). Deep learning for computer vision: image classification, object detection, and face recognition in python. Machine Learning Mastery.
  • Catindig, J. (2023). Hispa. http://www.knowledgebank.irri.org/training/fact-sheets/pest-management/insects/item/rice-hispa Chawathe, S. S. (2020). Rice disease detection by image analysis. 2020 10th Annual Computing and Communication Workshop and Conference (CCWC),
  • Chen, J., Chen, J., Zhang, D., Sun, Y., ve Nanehkaran, Y. A. (2020). Using deep transfer learning for image-based plant disease identification. Computers and Electronics in Agriculture, 173, 105393. https://doi.org/https://doi.org/10.1016/j.compag.2020.105393
  • CM Vera Cruz, I. O., NP Castilla, and R Opulencia. (2023). Bacterial Leaf Blight http://www.knowledgebank.irri.org/decision-tools/rice-doctor/rice-doctor-fact-sheets/item/bacterial-blight
  • Cook, D., Feuz, K. D., ve Krishnan, N. C. (2013). Transfer learning for activity recognition: A survey. Knowledge and information systems, 36, 537-556.
  • Coulibaly, S., Kamsu-Foguem, B., Kamissoko, D., ve Traore, D. (2019). Deep neural networks with transfer learning in millet crop images. Computers in Industry, 108, 115-120. https://doi.org/https://doi.org/10.1016/j.compind.2019.02.003
  • Dean, R., Van Kan, J. A., Pretorius, Z. A., Hammond Kosack, K. E., Di Pietro, A., Spanu, P. D., Rudd, J. J., Dickman, M., Kahmann, R., ve Ellis, J. (2012). The Top 10 fungal pathogens in molecular plant pathology. Molecular plant pathology, 13(4), 414-430.
  • Ebrahimi, M., Khoshtaghaza, M. H., Minaei, S., ve Jamshidi, B. (2017). Vision-based pest detection based on SVM classification method. Computers and Electronics in Agriculture, 137, 52-58.
  • Fuentes, A., Yoon, S., Kim, S. C., ve Park, D. S. (2017). A robust deep-learning-based detector for real-time tomato plant diseases and pests recognition. Sensors, 17(9), 2022.
  • Ganesan, G., ve Chinnappan, J. (2022). Hybridization of ResNet with YOLO classifier for automated paddy leaf disease recognition: An optimized model. Journal of Field Robotics, 39(7), 1085-1109.
  • Gautam, V. (2020). Qualitative model to enhance quality of metadata for data warehouse. International Journal of Information Technology, 12, 1025-1036.
  • Gautam, V., Trivedi, N. K., Singh, A., Mohamed, H. G., Noya, I. D., Kaur, P., ve Goyal, N. (2022). A Transfer Learning-Based Artificial Intelligence Model for Leaf Disease Assessment. Sustainability, 14(20), 13610.
  • Goluguri, N. R. R., Devi, K. S., ve Srinivasan, P. (2021). Rice-net: an efficient artificial fish swarm optimization applied deep convolutional neural network model for identifying the Oryza sativa diseases. Neural Computing and Applications, 33(11), 5869-5884.
  • Gunawan, P., Kencana, E., ve Sari, K. (2021). Classification of rice leaf diseases using artificial neural network. Journal of Physics: Conference Series,
  • Gündüz, M. Ş., ve Işık, G. (2023). A new YOLO-based method for real-time crowd detection from video and performance analysis of YOLO models. Journal of Real-Time Image Processing, 20(1), 5.
  • Ham, J. H., Melanson, R. A., ve Rush, M. C. (2011). Burkholderia glumae: next major pathogen of rice? Molecular plant pathology, 12(4), 329-339.
  • He, K., Zhang, X., Ren, S., ve Sun, J. (2016). Deep residual learning for image recognition. Proceedings of the IEEE conference on computer vision and pattern recognition
  • Hossain, S. M. M., Tanjil, M. M. M., Ali, M. A. B., Islam, M. Z., Islam, M. S., Mobassirin, S., Sarker, I. H., ve Islam, S. R. (2020). Rice leaf diseases recognition using convolutional neural networks. Advanced Data Mining and Applications: 16th International Conference, ADMA 2020, Foshan, China, November 12–14, 2020, Proceedings 16,
  • Howard, A. G., Zhu, M., Chen, B., Kalenichenko, D., Wang, W., Weyand, T., Andreetto, M., ve Adam, H. (2017). Mobilenets: Efficient convolutional neural networks for mobile vision applications. arXiv preprint arXiv:1704.04861.
  • Htun, K. W., ve Htwe, C. S. (2018). Development of Paddy Diseased Leaf Classification System Using Modified Color Conversion. International Journal of Software ve Hardware Research in Engineering, 6(8).
  • Huang, G., Liu, Z., Van Der Maaten, L., ve Weinberger, K. Q. (2017). Densely connected convolutional networks. Proceedings of the IEEE conference on computer vision and pattern recognition,
  • Huang, J., Liao, H., Zhu, Y., Sun, J., Sun, Q., ve Liu, X. (2012). Hyperspectral detection of rice damaged by rice leaf folder (Cnaphalocrocis medinalis). Computers and Electronics in Agriculture, 82, 100-107. https://doi.org/https://doi.org/10.1016/j.compag.2012.01.002
  • Islam, T., Sah, M., Baral, S., ve Choudhury, R. R. (2018). A faster technique on rice disease detectionusing image processing of affected area in agro-field. 2018 Second International Conference on Inventive Communication and Computational Technologies (ICICCT),
  • Jena, K. K., ve Kim, S.-M. (2010). Current status of brown planthopper (BPH) resistance and genetics. Rice, 3(2), 161-171.
  • Jiang, H., Zhang, C., Qiao, Y., Zhang, Z., Zhang, W., ve Song, C. (2020). CNN feature based graph convolutional network for weed and crop recognition in smart farming. Computers and Electronics in Agriculture, 174, 105450. https://doi.org/https://doi.org/10.1016/j.compag.2020.105450
  • Kahar, M. A. A., Mutalib, S., ve Rahman, S. A. (2015). Early Detection and Classification of Paddy Diseases with Neural Networks and Fuzzy Logic Recent Advances in Mathematical and Computational Method.
  • Kamal, K., Yin, Z., Wu, M., ve Wu, Z. (2019). Depthwise separable convolution architectures for plant disease classification. Computers and Electronics in Agriculture, 165, 104948.
  • Karaman, A., Karaboga, D., Pacal, I., Akay, B., Basturk, A., Nalbantoglu, U., Coskun, S., ve Sahin, O. (2022). Hyper-parameter optimization of deep learning architectures using artificial bee colony (ABC) algorithm for high performance real-time automatic colorectal cancer (CRC) polyp detection. Applied Intelligence, 1-18.
  • Karaman, A., Pacal, I., Basturk, A., Akay, B., Nalbantoglu, U., Coskun, S., Sahin, O., ve Karaboga, D. (2023). Robust real-time polyp detection system design based on YOLO algorithms by optimizing activation functions and hyper-parameters with artificial bee colony (ABC). Expert Systems with Applications, 221, 119741. https://doi.org/https://doi.org/10.1016/j.eswa.2023.119741
  • Karlekar, A., ve Seal, A. (2020). SoyNet: Soybean leaf diseases classification. Computers and Electronics in Agriculture, 172, 105342.
  • Karmokar, B. C., Ullah, M. S., Siddiquee, M. K., ve Alam, K. M. R. (2015). Tea leaf diseases recognition using neural network ensemble. International Journal of Computer Applications, 114(17).
  • Kaur, P., ve Gautam, V. (2021). Plant biotic disease identification and classification based on leaf image: A review. Proceedings of 3rd International Conference on Computing Informatics and Networks: ICCIN 2020,
  • Khirade, S. D., ve Patil, A. (2015). Plant disease detection using image processing. 2015 International conference on computing communication control and automation,
  • KILIÇARSLAN, S. (2022). "Kurum Üzüm Tanelerinin Sınıflandırılması İçin Hibrit Bir Yaklaşım." Mühendislik Bilimleri ve Araştırmaları Dergisi 4(1): 62-71.
  • Kiruba, B., ve Arjunan, P. (2023). Paddy Doctor: A Visual Image Dataset for Automated Paddy Disease Classification and Benchmarking. Proceedings of the 6th Joint International Conference on Data Science ve Management of Data (10th ACM IKDD CODS and 28th COMAD),
  • Kovalskaya, N., ve Hammond, R. W. (2014). Molecular biology of viroid–host interactions and disease control strategies. Plant Science, 228, 48-60.
  • Krishnamoorthy, N., Prasad, L. N., Kumar, C. P., Subedi, B., Abraha, H. B., ve Sathishkumar, V. (2021). Rice leaf diseases prediction using deep neural networks with transfer learning. Environmental Research, 198, 111275.
  • Lee, Y., Hwang, J.-w., Lee, S., Bae, Y., ve Park, J. (2019). An energy and GPU-computation efficient backbone network for real-time object detection. Proceedings of the IEEE/CVF conference on computer vision and pattern recognition workshops,
  • Li, B., Liu, Z., Huang, J., Zhang, L., Zhou, W., ve Shi, J. (2009). Hyperspectral identification of rice diseases and pests based on principal component analysis and probabilistic neural network. Transactions of the Chinese Society of Agricultural Engineering, 25(9), 143-147.
  • Liu, B., ve Bruch, R. (2020). Weed detection for selective spraying: a review. Current Robotics Reports, 1, 19-26. Liu, H., Ma, X., Tao, M., Deng, R., Bangura, K., Deng, X., Liu, C., ve Qi, L. (2019). A Plant Leaf Geometric Parameter Measurement System Based on the Android Platform. Sensors (Basel), 19(8). https://doi.org/10.3390/s19081872
  • Malhi, G. S., Kaur, M., ve Kaushik, P. (2021). Impact of climate change on agriculture and its mitigation strategies: A review. Sustainability, 13(3), 1318.
  • Martinelli, F., Scalenghe, R., Davino, S., Panno, S., Scuderi, G., Ruisi, P., Villa, P., Stroppiana, D., Boschetti, M., Goulart, L. R., Davis, C. E., ve Dandekar, A. M. (2015). Advanced methods of plant disease detection. A review. Agronomy for Sustainable Development, 35(1), 1-25. https://doi.org/10.1007/s13593-014-0246-1
  • Masood, M. H., Saim, H., Taj, M., ve Awais, M. M. (2020). Early disease diagnosis for rice crop. arXiv preprint arXiv:2004.04775.
  • Mikołajczyk, A., ve Grochowski, M. (2018). Data augmentation for improving deep learning in image classification problem. 2018 international interdisciplinary PhD workshop (IIPhDW),
  • Mishra, A. M., Harnal, S., Mohiuddin, K., Gautam, V., Nasr, O. A., Goyal, N., Alwetaishi, M., ve Singh, A. (2022). A Deep Learning-Based Novel Approach for Weed Growth Estimation. Intelligent Automation ve Soft Computing, 31(2).
  • Nagaraju, M., ve Chawla, P. (2020). Systematic review of deep learning techniques in plant disease detection. International journal of system assurance engineering and management, 11, 547-560.
  • Nam, J., ve Kim, S. (2015). Heterogeneous defect prediction. Proceedings of the 2015 10th joint meeting on foundations of software engineering,
  • Narmadha, R., ve Arulvadivu, G. (2017). Detection and measurement of paddy leaf disease symptoms using image processing. 2017 International Conference on Computer Communication and Informatics (ICCCI),
  • Ngugi, L. C., Abelwahab, M., ve Abo-Zahhad, M. (2021). Recent advances in image processing techniques for automated leaf pest and disease recognition – A review. Information Processing in Agriculture, 8(1), 27-51. https://doi.org/https://doi.org/10.1016/j.inpa.2020.04.004
  • Nixon, M., ve Aguado, A. (2019). Feature extraction and image processing for computer vision. Academic press.
  • Ozguven, M. M., ve Adem, K. (2019). Automatic detection and classification of leaf spot disease in sugar beet using deep learning algorithms. Physica A: Statistical Mechanics and its Applications, 535, 122537. https://doi.org/https://doi.org/10.1016/j.physa.2019.122537
  • Pacal, I. (2022). Deep Learning Approaches for Classification of Breast Cancer in Ultrasound (US) Images. Journal of the Institute of Science and Technology, 12(4), 1917-1927.
  • Pacal, I., Karaboga, D., Basturk, A., Akay, B., ve Nalbantoglu, U. (2020). A comprehensive review of deep learning in colon cancer. Computers in Biology and Medicine, 126, 104003. https://doi.org/https://doi.org/10.1016/j.compbiomed.2020.104003
  • Pacal, I., ve ark. (2022). "An efficient real-time colonic polyp detection with YOLO algorithms trained by using negative samples and large datasets." Computers in Biology and Medicine 141: 105031.
  • Peng, J., Kang, S., Ning, Z., Deng, H., Shen, J., Xu, Y., Zhang, J., Zhao, W., Li, X., ve Gong, W. (2020). Residual convolutional neural network for predicting response of transarterial chemoembolization in hepatocellular carcinoma from CT imaging. European radiology, 30, 413-424.
  • Polder, G., Westeringh, N. v. d., Kool, J., Khan, H. A., Kootstra, G., ve Nieuwenhuizen, A. (2019). Automatic Detection of Tulip Breaking Virus (TBV) Using a Deep Convolutional Neural Network⁎⁎This work was partially funded by the Dutch Product Board for Horticulture and the Dutch Ministry of Economic Affairs, Agriculture and Innovation. The research is part of the public private partnership BollenRevolutie 4.0 funded under the grant TKI-TU-1806. IFAC-PapersOnLine, 52(30), 12-17. https://doi.org/https://doi.org/10.1016/j.ifacol.2019.12.482
  • Ramesh, S., ve Vydeki, D. (2020). Recognition and classification of paddy leaf diseases using Optimized Deep Neural network with Jaya algorithm. Information Processing in Agriculture, 7(2), 249-260. https://doi.org/https://doi.org/10.1016/j.inpa.2019.09.002
  • Rangarajan, A. K., Purushothaman, R., ve Ramesh, A. (2018). Tomato crop disease classification using pre-trained deep learning algorithm. Procedia Computer Science, 133, 1040-1047. https://doi.org/https://doi.org/10.1016/j.procs.2018.07.070
  • Russakovsky, O., ve ark. (2015). "Imagenet large scale visual recognition challenge." International journal of computer vision 115: 211-252.
  • Sambasivam, G., ve Opiyo, G. D. (2021). A predictive machine learning application in agriculture: Cassava disease detection and classification with imbalanced dataset using convolutional neural networks. Egyptian Informatics Journal, 22(1), 27-34. https://doi.org/https://doi.org/10.1016/j.eij.2020.02.007
  • Sengupta, S., ve Das, A. K. (2017). Particle Swarm Optimization based incremental classifier design for rice disease prediction. Computers and Electronics in Agriculture, 140, 443-451.
  • Senthil Pandi, S., Senthilselvi, A., Gitanjali, J., ArivuSelvan, K., Gopal, J., ve Vellingiri, J. (2022). Rice plant disease classification using dilated convolutional neural network with global average pooling. Ecological Modelling, 474, 110166. https://doi.org/https://doi.org/10.1016/j.ecolmodel.2022.110166
  • Sethy, P. K., Barpanda, N. K., Rath, A. K., ve Behera, S. K. (2020a). Deep feature based rice leaf disease identification using support vector machine. Computers and Electronics in Agriculture, 175, 105527. https://doi.org/https://doi.org/10.1016/j.compag.2020.105527
  • Sethy, P. K., Barpanda, N. K., Rath, A. K., ve Behera, S. K. (2020b). Image Processing Techniques for Diagnosing Rice Plant Disease: A Survey. Procedia Computer Science, 167, 516-530. https://doi.org/https://doi.org/10.1016/j.procs.2020.03.308
  • Sharma, M., Kumar, C. J., ve Deka, A. (2022). Early diagnosis of rice plant disease using machine learning techniques. Archives of Phytopathology and Plant Protection, 55(3), 259-283.
  • Shorten, C., ve Khoshgoftaar, T. M. (2019). A survey on image data augmentation for deep learning. Journal of big data, 6(1), 1-48.
  • Simonyan, K., ve Zisserman, A. (2014). Very deep convolutional networks for large-scale image recognition. arXiv preprint arXiv:1409.1556.
  • Sladojevic, S., Arsenovic, M., Anderla, A., Culibrk, D., ve Stefanovic, D. (2016). Deep neural networks based recognition of plant diseases by leaf image classification. Computational intelligence and neuroscience, 2016.
  • Sparks, A. (2023a). Bacterial Leaf Streak http://www.knowledgebank.irri.org/training/fact-sheets/pest-management/diseases/item/bacterial-leaf-streak
  • Sparks, A. (2023b). Tungro. http://www.knowledgebank.irri.org/training/fact-sheets/pest-management/diseases/item/tungro#:~:text=Rice%20tungro%20disease%20is%20caused,commonly%20found%20in%20rice%20paddies.
  • Srinivas, B., Satheesh, P., Rama Santosh Naidu, P., ve Neelima, U. (2021). Prediction of guava plant diseases using deep learning. ICCCE 2020: Proceedings of the 3rd International Conference on Communications and Cyber Physical Engineering,
  • Strange, R. N., ve Scott, P. R. (2005). Plant disease: a threat to global food security. Annu. Rev. Phytopathol., 43, 83-116.
  • Sujithra, J., & Ukrit, M. F. (2020). A review on crop disease identification and classification through leaf images. European Journal of Molecular & Clinical Medicine, 7(09), 2020.
  • Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D., Erhan, D., Vanhoucke, V., ve Rabinovich, A. (2015). Going deeper with convolutions. Proceedings of the IEEE conference on computer vision and pattern recognition,
  • Szegedy, C., Vanhoucke, V., Ioffe, S., Shlens, J., ve Wojna, Z. (2016). Rethinking the inception architecture for computer vision. Proceedings of the IEEE conference on computer vision and pattern recognition,
  • Tan, M., ve Le, Q. (2019). Efficientnet: Rethinking model scaling for convolutional neural networks. International conference on machine learning,
  • Tao, M., Ma, X., Huang, X., Liu, C., Deng, R., Liang, K., ve Qi, L. (2020). Smartphone-based detection of leaf color levels in rice plants. Computers and Electronics in Agriculture, 173, 105431. https://doi.org/https://doi.org/10.1016/j.compag.2020.105431
  • Thomas, J., ve Raj, E. D. (2021). Effectual single image dehazing with color correction transform and dark channel prior. Data Science and Computational Intelligence: Sixteenth International Conference on Information Processing, ICInPro 2021, Bengaluru, India, October 22–24, 2021, Proceedings 16,
  • Tripathi, A. D., Mishra, R., Maurya, K. K., Singh, R. B., ve Wilson, D. W. (2019). Estimates for world population and global food availability for global health. In The role of functional food security in global health (pp. 3-24). Elsevier.
  • Trivedi, N. K., Gautam, V., Anand, A., Aljahdali, H. M., Villar, S. G., Anand, D., Goyal, N., ve Kadry, S. (2021). Early detection and classification of tomato leaf disease using high-performance deep neural network. Sensors, 21(23), 7987.
  • Udutalapally, V., Mohanty, S. P., Pallagani, V., ve Khandelwal, V. (2020). sCrop: A novel device for sustainable automatic disease prediction, crop selection, and irrigation in Internet-of-Agro-Things for smart agriculture. Ieee Sensors Journal, 21(16), 17525-17538.
  • Uğuz, S., ve Uysal, N. (2021). Classification of olive leaf diseases using deep convolutional neural networks. Neural Computing and Applications, 33(9), 4133-4149.
  • van Eeuwijk, F. A., Bustos-Korts, D., Millet, E. J., Boer, M. P., Kruijer, W., Thompson, A., Malosetti, M., Iwata, H., Quiroz, R., Kuppe, C., Muller, O., Blazakis, K. N., Yu, K., Tardieu, F., ve Chapman, S. C. (2019). Modelling strategies for assessing and increasing the effectiveness of new phenotyping techniques in plant breeding. Plant Science, 282, 23-39. https://doi.org/10.1016/j.plantsci.2018.06.018
  • Velesaca, H. O., Mira, R., Suárez, P. L., Larrea, C. X., ve Sappa, A. D. (2020). Deep learning based corn kernel classification. Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops,
  • Verma, T., ve Dubey, S. (2018). Optimizing Rice Plant Diseases Recognition in Image Processing and Decision Tree Based Model. Smart and Innovative Trends in Next Generation Computing Technologies: Third International Conference, NGCT 2017, Dehradun, India, October 30-31, 2017, Revised Selected Papers, Part II 3,
  • Waheed, A., Goyal, M., Gupta, D., Khanna, A., Hassanien, A. E., ve Pandey, H. M. (2020). An optimized dense convolutional neural network model for disease recognition and classification in corn leaf. Computers and Electronics in Agriculture, 175, 105456.
  • Wang, C., ve Mahadevan, S. (2011). Heterogeneous domain adaptation using manifold alignment. IJCAI proceedings-international joint conference on artificial intelligence,
  • Wang, G., Sun, Y., ve Wang, J. (2017). Automatic Image-Based Plant Disease Severity Estimation Using Deep Learning. Comput Intell Neurosci, 2017, 2917536. https://doi.org/10.1155/2017/2917536
  • Xiao, M., Ma, Y., Feng, Z., Deng, Z., Hou, S., Shu, L., ve Lu, Z. (2018). Rice blast recognition based on principal component analysis and neural network. Computers and Electronics in Agriculture, 154, 482-490. https://doi.org/https://doi.org/10.1016/j.compag.2018.08.028
  • Xu, G., Zhang, F., Shah, S. G., Ye, Y., ve Mao, H. (2011). Use of leaf color images to identify nitrogen and potassium deficient tomatoes. Pattern Recognition Letters, 32(11), 1584-1590. https://doi.org/https://doi.org/10.1016/j.patrec.2011.04.020
  • Yang, W., Chen, J., Chen, G., Wang, S., ve Fu, F. (2013). The early diagnosis and fast detection of blast fungus, Magnaporthe grisea, in rice plant by using its chitinase as biochemical marker and a rice cDNA encoding mannose-binding lectin as recognition probe. Biosensors and Bioelectronics, 41, 820-826.
  • Zeigler, R. S., ve Barclay, A. (2008). The relevance of rice. In (Vol. 1, pp. 3-10): Springer.
  • Zeng, F., ve Liu, L. (2013). Contrast enhancement of mammographic images using guided image filtering. Advances in Image and Graphics Technologies: Chinese Conference, IGTA 2013, Beijing, China, April 2-3, 2013. Proceedings,
  • Zhang, M., Qin, Z., ve Liu, X. (2005). Remote sensed spectral imagery to detect late blight in field tomatoes. Precision Agriculture, 6, 489-508.
  • Zhu, W., Chen, H., Ciechanowska, I., ve Spaner, D. (2018). Application of infrared thermal imaging for the rapid diagnosis of crop disease. IFAC-PapersOnLine, 51(17), 424-430. https://doi.org/https://doi.org/10.1016/j.ifacol.2018.08.184
APA VEZIROGLU E, Pacal I, Coşkunçay A (2023). Derin Evrişimli Sinir Ağları Kullanılarak Pirinç Hastalıklarının Sınıflandırılması. , 792 - 814. 10.21597/jist.1265769
Chicago VEZIROGLU Erkan,Pacal Ishak,Coşkunçay Ahmet Derin Evrişimli Sinir Ağları Kullanılarak Pirinç Hastalıklarının Sınıflandırılması. (2023): 792 - 814. 10.21597/jist.1265769
MLA VEZIROGLU Erkan,Pacal Ishak,Coşkunçay Ahmet Derin Evrişimli Sinir Ağları Kullanılarak Pirinç Hastalıklarının Sınıflandırılması. , 2023, ss.792 - 814. 10.21597/jist.1265769
AMA VEZIROGLU E,Pacal I,Coşkunçay A Derin Evrişimli Sinir Ağları Kullanılarak Pirinç Hastalıklarının Sınıflandırılması. . 2023; 792 - 814. 10.21597/jist.1265769
Vancouver VEZIROGLU E,Pacal I,Coşkunçay A Derin Evrişimli Sinir Ağları Kullanılarak Pirinç Hastalıklarının Sınıflandırılması. . 2023; 792 - 814. 10.21597/jist.1265769
IEEE VEZIROGLU E,Pacal I,Coşkunçay A "Derin Evrişimli Sinir Ağları Kullanılarak Pirinç Hastalıklarının Sınıflandırılması." , ss.792 - 814, 2023. 10.21597/jist.1265769
ISNAD VEZIROGLU, Erkan vd. "Derin Evrişimli Sinir Ağları Kullanılarak Pirinç Hastalıklarının Sınıflandırılması". (2023), 792-814. https://doi.org/10.21597/jist.1265769
APA VEZIROGLU E, Pacal I, Coşkunçay A (2023). Derin Evrişimli Sinir Ağları Kullanılarak Pirinç Hastalıklarının Sınıflandırılması. Iğdır Üniversitesi Fen Bilimleri Enstitüsü Dergisi, 13(2), 792 - 814. 10.21597/jist.1265769
Chicago VEZIROGLU Erkan,Pacal Ishak,Coşkunçay Ahmet Derin Evrişimli Sinir Ağları Kullanılarak Pirinç Hastalıklarının Sınıflandırılması. Iğdır Üniversitesi Fen Bilimleri Enstitüsü Dergisi 13, no.2 (2023): 792 - 814. 10.21597/jist.1265769
MLA VEZIROGLU Erkan,Pacal Ishak,Coşkunçay Ahmet Derin Evrişimli Sinir Ağları Kullanılarak Pirinç Hastalıklarının Sınıflandırılması. Iğdır Üniversitesi Fen Bilimleri Enstitüsü Dergisi, vol.13, no.2, 2023, ss.792 - 814. 10.21597/jist.1265769
AMA VEZIROGLU E,Pacal I,Coşkunçay A Derin Evrişimli Sinir Ağları Kullanılarak Pirinç Hastalıklarının Sınıflandırılması. Iğdır Üniversitesi Fen Bilimleri Enstitüsü Dergisi. 2023; 13(2): 792 - 814. 10.21597/jist.1265769
Vancouver VEZIROGLU E,Pacal I,Coşkunçay A Derin Evrişimli Sinir Ağları Kullanılarak Pirinç Hastalıklarının Sınıflandırılması. Iğdır Üniversitesi Fen Bilimleri Enstitüsü Dergisi. 2023; 13(2): 792 - 814. 10.21597/jist.1265769
IEEE VEZIROGLU E,Pacal I,Coşkunçay A "Derin Evrişimli Sinir Ağları Kullanılarak Pirinç Hastalıklarının Sınıflandırılması." Iğdır Üniversitesi Fen Bilimleri Enstitüsü Dergisi, 13, ss.792 - 814, 2023. 10.21597/jist.1265769
ISNAD VEZIROGLU, Erkan vd. "Derin Evrişimli Sinir Ağları Kullanılarak Pirinç Hastalıklarının Sınıflandırılması". Iğdır Üniversitesi Fen Bilimleri Enstitüsü Dergisi 13/2 (2023), 792-814. https://doi.org/10.21597/jist.1265769