2021 8th International Conference on Signal Processing and Integrated Networks (SPIN) | 2021

Exploiting Pre-trained Encoder with Receptive Fields and Squeeze-Excitation module for Road Segmentation

 
 

Abstract


Autonomous vehicles will decrease the number of accidents on the road caused by human error. Intelligent vehicles have traditionally advanced in a step-by-step manner. These developments boost the automation scene in vehicles by incorporating systems that facilitate the driver in maintaining a constant speed, adhering to a lane, or transferring control over vehicle and driver. Autonomous vehicles must have a thorough understanding of their surroundings. As a result, object detection and road scene segmentation are critical in navigation for recognizing the drivable and non-drivable areas. Towards the development of the completely automated framework for road scene segmentation, we propose an RFB-SELinkNet that utilizes the SEResNeXt model as a feature extractor and receptive field block (RFB) with squeeze and excitation (SE) module for better feature representations. Our proposed framework outperforms D-LinkNet, Eff-UNet, and other state-of-art models. According to the experiments, the proposed model achieves 0.698 mloU and produces good segmentation outcomes on the validation set of the India Driving Lite (IDD Lite) dataset.

Volume None
Pages 139-143
DOI 10.1109/SPIN52536.2021.9565944
Language English
Journal 2021 8th International Conference on Signal Processing and Integrated Networks (SPIN)

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