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YOLO series algorithms in object detection of unmanned aerial vehicles: a survey
YOLO series algorithms are widely used in unmanned aerial vehicles (UAV) object detection scenarios due to their fast and lightweight properties. This article summarizes the key concepts in YOLO series algorithms, such as the anchor mechanism, feature fusion strategy, bounding box regression loss an...
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Published in: | Service oriented computing and applications 2024, Vol.18 (3), p.269-298 |
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description | YOLO series algorithms are widely used in unmanned aerial vehicles (UAV) object detection scenarios due to their fast and lightweight properties. This article summarizes the key concepts in YOLO series algorithms, such as the anchor mechanism, feature fusion strategy, bounding box regression loss and so on and points out the advantages and improvement space of the YOLO series algorithms. Discussing the relevant technologies of the YOLOv1 to YOLOv7 series algorithms in detail in three parts: basic structure, strengths and weaknesses, and compares the algorithm performance. On this basis, combined with the challenges of object detection technology in UAV applications, various solutions for improving the YOLO series algorithms and applying them to UAV object detection scenarios are demonstrated. The improvement strategies, application scenarios, academic contributions and limitations of the algorithms are summarized. Finally, the future development directions and challenges of applying YOLO series algorithms to UAV object recognition are prospected. |
doi_str_mv | 10.1007/s11761-024-00388-w |
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subjects | Algorithms Computer Appl. in Administrative Data Processing Computer Science Computer Systems Organization and Communication Networks e-Commerce/e-business IT in Business Management of Computing and Information Systems Object recognition Software Engineering/Programming and Operating Systems Special Issue Paper Unmanned aerial vehicles |
title | YOLO series algorithms in object detection of unmanned aerial vehicles: a survey |
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