0 citations
Deep learning-based long-distance optical UAV detection: color versus grayscale
2023pp. 11–11
Citations Over TimeTop 20% of 2023 papers
Abstract
This paper presents a comparison between grayscale and color-based deep learning algorithms for long distance optical UAV detection using robotic telescope systems. Three deep learning object detection algorithms are trained with a custom dataset consisting of RGB images and the performance is evaluated against the same algorithms trained with the same dataset converted to grayscale. Network training from scratch and fine-tuning are evaluated. The results for all algorithms show that fine-tuning with RGB images maximizes the detection performance and scores about 5% better in terms of mean average precision (mAP(0.5)) compared to fine-tuning on grayscale images.
Related Papers
- → GreyReID: A Novel Two-stream Deep Framework with RGB-grey Information for Person Re-identification(2021)18 cited
- → Research on Image Colorization Algorithm Based on Residual Neural Network(2017)9 cited
- → GreyReID: A Two-stream Deep Framework with RGB-grey Information for Person Re-identification(2019)5 cited
- → Grayscale Level Multiconnectivity(2005)
- → Determination of Concentration for Congo Red Dye Using Colour Image Analysis(2018)