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作 者:Farooq Ali Huma Qayyum Kashif Saleem Iftikhar Ahmad Muhammad Javed Iqbal
机构地区:[1]Department of Software Engineering,University of Engineering and Technology,Taxila,47050,Pakistan [2]Department of Computer Science&Engineering,College of Applied Studies&Community Service,King Saud University,Riyadh,11362,Saudi Arabia [3]Department of Information Technology,Faculty of Computing and Information Technology,King Abdulaziz University,Jeddah,21589,Saudi Arabia [4]Department of Computer Science,University of Engineering and Technology,Taxila,47050,Pakistan
出 处:《Computers, Materials & Continua》2025年第2期2373-2388,共16页计算机、材料和连续体(英文)
基 金:supported by King Saud University,Riyadh,Saudi Arabia,through the Researchers Supporting Project under Grant RSPD2025R697.
摘 要:Preservation of the crops depends on early and accurate detection of pests on crops as they cause several diseases decreasing crop production and quality. Several deep-learning techniques have been applied to overcome the issue of pest detection on crops. We have developed the YOLOCSP-PEST model for Pest localization and classification. With the Cross Stage Partial Network (CSPNET) backbone, the proposed model is a modified version of You Only Look Once Version 7 (YOLOv7) that is intended primarily for pest localization and classification. Our proposed model gives exceptionally good results under conditions that are very challenging for any other comparable models especially conditions where we have issues with the luminance and the orientation of the images. It helps farmers working out on their crops in distant areas to determine any infestation quickly and accurately on their crops which helps in the quality and quantity of the production yield. The model has been trained and tested on 2 datasets namely the IP102 data set and a local crop data set on both of which it has shown exceptional results. It gave us a mean average precision (mAP) of 88.40% along with a precision of 85.55% and a recall of 84.25% on the IP102 dataset meanwhile giving a mAP of 97.18% on the local data set along with a recall of 94.88% and a precision of 97.50%. These findings demonstrate that the proposed model is very effective in detecting real-life scenarios and can help in the production of crops improving the yield quality and quantity at the same time.
关 键 词:Deep learning classification of pests YOLOCSP-PEST pest detection
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