A hybrid Cycle GAN-based lightweight road perception pipeline for road dataset generation for Urban mobility

Author:

Rajagopal Balaji Ganesh,Kumar Manish,Alshehri Abdulaziz H.,Alanazi Fayez,Deifalla Ahmed farouk,Yosri Ahmed M.ORCID,Azam Abdelhalim

Abstract

One of the major problems that cause continual trouble in deep learning networks is that training a large network requires massive labelled datasets. The preparation of a massive labelled dataset is a cumbersome task and requires lot of human interventions. This paper proposes a novel generator network ‘Sim2Real’ transfer is a recent and fast-developing field in machine learning used to bridge the gap between simulated and real data. Training with simulated datasets often converges due to its size but fails to generalize real-world applications. Simulated datasets can be used to train and test deep learning models, enables the development and evaluation of new algorithms and architectures. By simulating road dataset, researchers can generate large amounts of realistic road-traffic dataset that can be used to study and understand several problems such as vehicular object tracking and classification, traffic situation analysis etc. The main advantage of such a transfer algorithm is to use the abundance of a simulated dataset to generate huge realistic-looking datasets to solve data-intense tasks. This work presents a novel, robust sim2real algorithm that converts the labels of a semantic segmentation map to a realistic-looking street view using the Cityscapes dataset and aims to achieve robust urban mobility for smart cities. Further, the generalizability of the Cycle Generative Adversarial Network (CycleGAN) architecture was tested by using an origami robot dataset for sim2real transfer. We show that the results were found to be qualitatively satisfactory for different traffic analysis applications. In addition, road perception was done using a lightweight SVM pipeline and evaluated on the KITTI dataset. We have incorporated Cycle Consistency Loss and Identity Loss as the metrics to evaluate the performance of the proposed Cycle GAN model. We inferred that the proposed Cycle GAN model provides an Identity loss of less than 0.2 in both the Cityscapes dataset and KITTI datasets. Also, we understand that the super-pixel resolution has a good impact on the quantitative results of the proposed Cycle GAN models.

Funder

Deanship of Scientific Research at Najran University

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

Reference39 articles.

1. The health benefits of autonomous vehicles: public awareness and receptivity in Australia;S. Pettigrew;Aust N Z J Public Health,2018

2. Electric vehicle routing problem: A systematic review and a new comprehensive model with nonlinear energy recharging and consumption;Y. Xiao;Renewable and Sustainable Energy Reviews,2021

3. Autonomous vehicles: challenges, opportunities, and future implications for transportation policies;S. A. Bagloee;Journal of Modern Transportation,2016

4. Gated spatial-temporal graph neural network based short-term load forecasting for wide-area multiple buses;N. Huang;International Journal of Electrical Power & Energy Systems,2023

5. Research on Road Environmental Sense Method of Intelligent Vehicle Based on Tracking Check;Y. Han;IEEE Transactions on Intelligent Transportation Systems,2022

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