Track Boosting and Synthetic Data Aided Drone Detection

24 Nov 2021  ·  Fatih Cagatay Akyon, Ogulcan Eryuksel, Kamil Anil Ozfuttu, Sinan Onur Altinuc ·

This is the paper for the first place winning solution of the Drone vs. Bird Challenge, organized by AVSS 2021. As the usage of drones increases with lowered costs and improved drone technology, drone detection emerges as a vital object detection task. However, detecting distant drones under unfavorable conditions, namely weak contrast, long-range, low visibility, requires effective algorithms. Our method approaches the drone detection problem by fine-tuning a YOLOv5 model with real and synthetically generated data using a Kalman-based object tracker to boost detection confidence. Our results indicate that augmenting the real data with an optimal subset of synthetic data can increase the performance. Moreover, temporal information gathered by object tracking methods can increase performance further.

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Datasets


Results from the Paper


 Ranked #1 on Object Detection on Drone vs Bird (using extra training data)

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Task Dataset Model Metric Name Metric Value Global Rank Uses Extra
Training Data
Result Benchmark
Object Detection Drone vs Bird OBSS YOLOv5+Track Boosting (Including Synthetic Data) AP50 79.4 # 1
AP50s 86.2 # 2
AP50m 72.7 # 1
AP50l 70.3 # 1
Object Detection Drone vs Bird OBSS YOLOv5+Track Boosting AP50 76.1 # 2
AP50s 86.6 # 1
AP50m 67.6 # 2
AP50l 43 # 2

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