A Comprehensive Approach for UAV Small Object Detection with
Simulation-based Transfer Learning and Adaptive Fusion
- URL: http://arxiv.org/abs/2109.01800v1
- Date: Sat, 4 Sep 2021 06:27:13 GMT
- Title: A Comprehensive Approach for UAV Small Object Detection with
Simulation-based Transfer Learning and Adaptive Fusion
- Authors: Chen Rui, Guo Youwei, Zheng Huafei, Jiang Hongyu
- Abstract summary: Deep learning is widely adopted for UAV object detection whereas researches on this topic are limited by the amount of dataset and small scale of UAV.
To tackle these problems, a novel comprehensive approach that combines transfer learning based on simulation data and adaptive fusion is proposed.
Experiment results demonstrate the effectiveness of simulation-based transfer learning which leads to a 2.7% performance increase on UAV object detection.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Precisely detection of Unmanned Aerial Vehicles(UAVs) plays a critical role
in UAV defense systems. Deep learning is widely adopted for UAV object
detection whereas researches on this topic are limited by the amount of dataset
and small scale of UAV. To tackle these problems, a novel comprehensive
approach that combines transfer learning based on simulation data and adaptive
fusion is proposed. Firstly, the open-source plugin AirSim proposed by
Microsoft is used to generate mass realistic simulation data. Secondly,
transfer learning is applied to obtain a pre-trained YOLOv5 model on the
simulated dataset and fine-tuned model on the real-world dataset. Finally, an
adaptive fusion mechanism is proposed to further improve small object detection
performance. Experiment results demonstrate the effectiveness of
simulation-based transfer learning which leads to a 2.7% performance increase
on UAV object detection. Furthermore, with transfer learning and adaptive
fusion mechanism, 7.1% improvement is achieved compared to the original YOLO v5
model.
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