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Real-Time Puddle Detection Using Convolutiona Neural Networks With Unmanned Aerial Vehicles

dc.authorscopusid 57226391491
dc.authorscopusid 57188924981
dc.authorscopusid 57226399924
dc.authorscopusid 6508068175
dc.contributor.author Bilge Han Taş, M.
dc.contributor.author Coşkun Irmak, M.
dc.contributor.author Turan, S.
dc.contributor.author Haşıloğlu, A.
dc.date.accessioned 2025-05-10T16:53:53Z
dc.date.available 2025-05-10T16:53:53Z
dc.date.issued 2021
dc.department T.C. Van Yüzüncü Yıl Üniversitesi en_US
dc.department-temp Bilge Han Taş M., Erzincan Binali Yıldırım University, Erzincan, Turkey; Coşkun Irmak M., Van Yüzüncü Yıl University, Van, Turkey; Turan S., Erzincan Binali Yıldırım University, Erzincan, Turkey; Haşıloğlu A., Atatürk University, Erzurum, Turkey en_US
dc.description.abstract The study was carried out in order to enable systems witli weak processing power and motion to detect objects using cloud services. In addition, the dataset is expanded by continuous labeling to create big data. In the study, it is aimed to detect objects using cloud-based deep learning methods with an unmanned aerial vehicle (UAV). In the study, training processes were carried out with Google Colaboratory, a cloud service provider. The training processes are a YOLO-based system, and a convolutional neural network was created by revising the parameters in line with the needs. The convolutional neural network model provides communication between neurons in the convolutional layers by bringing the image data to the desired pixel ranges. Unlabeled pictures are included in the training by being tagged. In this way, it is possible to continuously enlarge the data pool. Since the microcomputers used in UAVs are insufficient for these processes, a cloud-based training model has been created. As a result of the study, cloud-based deep learning models work as desired. It is possible to show the accuracy of the model with the low losses seen in the loss functions and the mAP value. Graphic cards with high processing power are needed to provide training. It is essential to use powerful graphics cards when working on image data. Cost reduced by using cloud services. The training was accelerated and high-rate object detections were made. YOLOv5x was used in the study. It is preferred because of its fast training and high frame rate. Recall 80% Precision 93% mAP 82.6% values were taken. © 2021 IEEE en_US
dc.identifier.doi 10.1109/UBMK52708.2021.9558907
dc.identifier.endpage 602 en_US
dc.identifier.isbn 9781665429085
dc.identifier.scopus 2-s2.0-85125835237
dc.identifier.scopusquality N/A
dc.identifier.startpage 598 en_US
dc.identifier.uri https://doi.org/10.1109/UBMK52708.2021.9558907
dc.identifier.uri https://hdl.handle.net/20.500.14720/2932
dc.identifier.wosquality N/A
dc.language.iso en en_US
dc.publisher Institute of Electrical and Electronics Engineers Inc. en_US
dc.relation.ispartof Proceedings - 6th International Conference on Computer Science and Engineering, UBMK 2021 -- 6th International Conference on Computer Science and Engineering, UBMK 2021 -- 15 September 2021 through 17 September 2021 -- Ankara -- 176826 en_US
dc.relation.publicationcategory Konferans Öğesi - Uluslararası - Kurum Öğretim Elemanı en_US
dc.rights info:eu-repo/semantics/closedAccess en_US
dc.subject Cloud Based Deep Learning en_US
dc.subject Convolutional Neural Network en_US
dc.subject Puddle Detection en_US
dc.subject Real Time Object Detection en_US
dc.subject Unmanned Aerial Vehicle en_US
dc.subject Yolov5 en_US
dc.title Real-Time Puddle Detection Using Convolutiona Neural Networks With Unmanned Aerial Vehicles en_US
dc.type Conference Object en_US

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