Efficient Semantic Segmentation of Urban Traffic Images using ERFNet and Fisheye Cameras
DOI: 10.54647/computer520420 24 Downloads 2230 Views
Author(s)
Abstract
Efficient and accurate semantic segmentation of urban traffic images is critical for various applications such as autonomous driving, traffic monitoring, and urban planning. However, the complex and dynamic nature of urban scenes, occlusions, and fisheye distortions pose significant challenges for accurate semantic segmentation. In this paper, we propose the use of the Efficient Residual Factorized ConvNet (ERFNet) architecture for efficient and accurate semantic segmentation of urban traffic images captured using fisheye cameras. We conducted experiments on a dataset of urban traffic images and compared the performance of ERFNet with several state-of-the-art architectures. The results showed that ERFNet outperformed other architectures in terms of both accuracy and speed, achieving an intersection over union (IoU) score of 80.2%. Additionally, ERFNet had the lowest computational cost, making it suitable for real-time applications with limited resources. Our results demonstrate the potential of ERFNet for efficient semantic segmentation of urban traffic images captured using fisheye cameras, providing insights for future research in this area.
Keywords
Semantic segmentation, ERFNet, CNN, urban area traffic, fish-eye camera.
Cite this paper
Pichika Ravi Kiran, Midhun Chakkaravarthy,
Efficient Semantic Segmentation of Urban Traffic Images using ERFNet and Fisheye Cameras
, SCIREA Journal of Computer.
Volume 9, Issue 3, June 2024 | PP. 73-86.
10.54647/computer520420
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