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Improved Object Detection Method Utilizing YOLOv7-Tiny for Unmanned Aerial Vehicle Photographic Imagery
by
Pan, Xinghao
, Zhang, Linhua
, Yue, Xiaodong
, Wu, Peng
, Xiong, Ning
, Guo, Caiping
in
Accuracy
/ Aerial photography
/ Aerial vehicle
/ Algorithms
/ Antennas
/ Boxes
/ Classification
/ Datasets
/ decoupled head
/ Deep learning
/ Drone aircraft
/ Effectiveness
/ Image enhancement
/ Loss functions
/ Methods
/ Neural networks
/ Object detection
/ Object detection method
/ Object recognition
/ Objects detection
/ Photographic imagery
/ Small object detection
/ Small objects
/ Telematics
/ Unmanned aerial vehicles
/ Unmanned aerial vehicles (UAV)
/ Weather
/ WIoU
/ Wise intersection over union
/ YOLOv7-tiny model
2023
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Improved Object Detection Method Utilizing YOLOv7-Tiny for Unmanned Aerial Vehicle Photographic Imagery
by
Pan, Xinghao
, Zhang, Linhua
, Yue, Xiaodong
, Wu, Peng
, Xiong, Ning
, Guo, Caiping
in
Accuracy
/ Aerial photography
/ Aerial vehicle
/ Algorithms
/ Antennas
/ Boxes
/ Classification
/ Datasets
/ decoupled head
/ Deep learning
/ Drone aircraft
/ Effectiveness
/ Image enhancement
/ Loss functions
/ Methods
/ Neural networks
/ Object detection
/ Object detection method
/ Object recognition
/ Objects detection
/ Photographic imagery
/ Small object detection
/ Small objects
/ Telematics
/ Unmanned aerial vehicles
/ Unmanned aerial vehicles (UAV)
/ Weather
/ WIoU
/ Wise intersection over union
/ YOLOv7-tiny model
2023
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Improved Object Detection Method Utilizing YOLOv7-Tiny for Unmanned Aerial Vehicle Photographic Imagery
by
Pan, Xinghao
, Zhang, Linhua
, Yue, Xiaodong
, Wu, Peng
, Xiong, Ning
, Guo, Caiping
in
Accuracy
/ Aerial photography
/ Aerial vehicle
/ Algorithms
/ Antennas
/ Boxes
/ Classification
/ Datasets
/ decoupled head
/ Deep learning
/ Drone aircraft
/ Effectiveness
/ Image enhancement
/ Loss functions
/ Methods
/ Neural networks
/ Object detection
/ Object detection method
/ Object recognition
/ Objects detection
/ Photographic imagery
/ Small object detection
/ Small objects
/ Telematics
/ Unmanned aerial vehicles
/ Unmanned aerial vehicles (UAV)
/ Weather
/ WIoU
/ Wise intersection over union
/ YOLOv7-tiny model
2023
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Improved Object Detection Method Utilizing YOLOv7-Tiny for Unmanned Aerial Vehicle Photographic Imagery
Journal Article
Improved Object Detection Method Utilizing YOLOv7-Tiny for Unmanned Aerial Vehicle Photographic Imagery
2023
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Overview
In unmanned aerial vehicle photographs, object detection algorithms encounter challenges in enhancing both speed and accuracy for objects of different sizes, primarily due to complex backgrounds and small objects. This study introduces the PDWT-YOLO algorithm, based on the YOLOv7-tiny model, to improve the effectiveness of object detection across all sizes. The proposed method enhances the detection of small objects by incorporating a dedicated small-object detection layer, while reducing the conflict between classification and regression tasks through the replacement of the YOLOv7-tiny model’s detection head (IDetect) with a decoupled head. Moreover, network convergence is accelerated, and regression accuracy is improved by replacing the Complete Intersection over Union (CIoU) loss function with a Wise Intersection over Union (WIoU) focusing mechanism in the loss function. To assess the proposed model’s effectiveness, it was trained and tested on the VisDrone-2019 dataset comprising images captured by various drones across diverse scenarios, weather conditions, and lighting conditions. The experiments show that mAP@0.5:0.95 and mAP@0.5 increased by 5% and 6.7%, respectively, with acceptable running speed compared with the original YOLOv7-tiny model. Furthermore, this method shows improvement over other datasets, confirming that PDWT-YOLO is effective for multiscale object detection.
Publisher
MDPI AG
Subject
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