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Autori principali: Anwar, Aqeel, Choe, Tae Eun, Wang, Zian, Fidler, Sanja, Park, Minwoo
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2403.15370
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author Anwar, Aqeel
Choe, Tae Eun
Wang, Zian
Fidler, Sanja
Park, Minwoo
author_facet Anwar, Aqeel
Choe, Tae Eun
Wang, Zian
Fidler, Sanja
Park, Minwoo
contents Detecting a diverse range of objects under various driving scenarios is essential for the effectiveness of autonomous driving systems. However, the real-world data collected often lacks the necessary diversity presenting a long-tail distribution. Although synthetic data has been utilized to overcome this issue by generating virtual scenes, it faces hurdles such as a significant domain gap and the substantial efforts required from 3D artists to create realistic environments. To overcome these challenges, we present ARSim, a fully automated, comprehensive, modular framework designed to enhance real multi-view image data with 3D synthetic objects of interest. The proposed method integrates domain adaptation and randomization strategies to address covariate shift between real and simulated data by inferring essential domain attributes from real data and employing simulation-based randomization for other attributes. We construct a simplified virtual scene using real data and strategically place 3D synthetic assets within it. Illumination is achieved by estimating light distribution from multiple images capturing the surroundings of the vehicle. Camera parameters from real data are employed to render synthetic assets in each frame. The resulting augmented multi-view consistent dataset is used to train a multi-camera perception network for autonomous vehicles. Experimental results on various AV perception tasks demonstrate the superior performance of networks trained on the augmented dataset.
format Preprint
id arxiv_https___arxiv_org_abs_2403_15370
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Augmented Reality based Simulated Data (ARSim) with multi-view consistency for AV perception networks
Anwar, Aqeel
Choe, Tae Eun
Wang, Zian
Fidler, Sanja
Park, Minwoo
Computer Vision and Pattern Recognition
Machine Learning
Robotics
Detecting a diverse range of objects under various driving scenarios is essential for the effectiveness of autonomous driving systems. However, the real-world data collected often lacks the necessary diversity presenting a long-tail distribution. Although synthetic data has been utilized to overcome this issue by generating virtual scenes, it faces hurdles such as a significant domain gap and the substantial efforts required from 3D artists to create realistic environments. To overcome these challenges, we present ARSim, a fully automated, comprehensive, modular framework designed to enhance real multi-view image data with 3D synthetic objects of interest. The proposed method integrates domain adaptation and randomization strategies to address covariate shift between real and simulated data by inferring essential domain attributes from real data and employing simulation-based randomization for other attributes. We construct a simplified virtual scene using real data and strategically place 3D synthetic assets within it. Illumination is achieved by estimating light distribution from multiple images capturing the surroundings of the vehicle. Camera parameters from real data are employed to render synthetic assets in each frame. The resulting augmented multi-view consistent dataset is used to train a multi-camera perception network for autonomous vehicles. Experimental results on various AV perception tasks demonstrate the superior performance of networks trained on the augmented dataset.
title Augmented Reality based Simulated Data (ARSim) with multi-view consistency for AV perception networks
topic Computer Vision and Pattern Recognition
Machine Learning
Robotics
url https://arxiv.org/abs/2403.15370