Please use this identifier to cite or link to this item: https://rep.polessu.by/handle/123456789/35540
Title: Hybrid CNN-transformer model-based object detection methodology for UAV imagery
Authors: Nguyen, Van Bach
Keywords: UAV
object detection
YOLO
RT-DETR
hybrid model
Issue Date: 2026
Publisher: Пинск : Полесский государственный университет
Citation: Nguyen, Van Bach. Hybrid CNN-transformer model-based object detection methodology for UAV imagery / Nguyen Van Bach // Инжиниринг : теория и практика : материалы VI международной научно-практической конференции, Полесский государственный университет, г. Пинск, Республика Беларусь, 29-30 апреля 2026 г. / Полесский государственный университет [и др.]; редкол. Дунай В. И., Пригодич И. А., Чещевик В. Т. – Пинск : ПолесГУ, 2026. – С. 20-23.
Abstract: This paper proposes a hybrid object detection method for UAV imagery by combining YOLO (CNN-based) and RT-DETR (transformer-based) models. The framework integrates a bounding box processing module with fusion strategies and a confidence-based selection mechanism. Experimental results show that the hybrid approach improves detection accuracy, achieving a 0.7 increase in mAP50.
Appears in Collections:2026

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