Real-Time Multiple Guava Leaf Disease Detection from a Single Leaf Using Hybrid Deep Learning Technique  被引量:2

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作  者:Javed Rashid Imran Khan Ghulam Ali Shafiq ur Rehman Fahad Alturise Tamim Alkhalifah 

机构地区:[1]Department of CS&SE,Islamic International University,Islamabad,44000,Pakistan [2]Department of IT Services,University of Okara,Okara,56310,Pakistan [3]Department of CS,University of Okara,Okara,56310,Pakistan [4]Department of Botany,University of Okara,Okara,56310,Pakistan [5]Department of Computer,College of Science and Arts in Ar Rass,Qassim University,Ar Rass,Qassim,52571,Saudi Arabia

出  处:《Computers, Materials & Continua》2023年第1期1235-1257,共23页计算机、材料和连续体(英文)

基  金:financially supported by the Deanship of Scientific Research,Qassim University,Saudi Arabia for funding the publication of this project.

摘  要:The guava plant has achieved viable significance in subtropics and tropics owing to its flexibility to climatic environments,soil conditions and higher human consumption.It is cultivated in vast areas of Asian and Non-Asian countries,including Pakistan.The guava plant is vulnerable to diseases,specifically the leaves and fruit,which result in massive crop and profitability losses.The existing plant leaf disease detection techniques can detect only one disease from a leaf.However,a single leaf may contain symptoms of multiple diseases.This study has proposed a hybrid deep learning-based framework for the real-time detection of multiple diseases from a single guava leaf in several steps.Firstly,Guava Infected Patches Modified MobileNetV2 and U-Net(GIP-MU-NET)has been proposed to segment the infected guava patches.The proposed model consists of modified MobileNetv2 as an encoder,and the U-Net model’s up-sampling layers are used as a decoder part.Secondly,the Guava Leaf SegmentationModel(GLSM)is proposed to segment the healthy and infected leaves.In the final step,the Guava Multiple Leaf Diseases Detection(GMLDD)model based on the YOLOv5 model detects various diseases from a guava leaf.Two self-collected datasets(the Guava Patches Dataset and the Guava Leaf Diseases Dataset)are used for training and validation.The proposed method detected the various defects,including five distinct classes,i.e.,anthracnose,insect attack,nutrition deficiency,wilt,and healthy.On average,the GIP-MU-Net model achieved 92.41%accuracy,the GLSM gained 83.40%accuracy,whereas the proposed GMLDD technique achieved 73.3%precision,73.1%recall,71.0%mAP@0.5 and 50.3 mAP@0.5:0.95 scores for all the aforesaid classes.

关 键 词:Guava leaf diseases guava leaf segmentation guava patches segmentation multiple leaf diseases guava leaf diseases dataset 

分 类 号:TP18[自动化与计算机技术—控制理论与控制工程]

 

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