2021
DOI: 10.48550/arxiv.2111.07971
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Towards Optimal Strategies for Training Self-Driving Perception Models in Simulation

Abstract: Autonomous driving relies on a huge volume of real-world data to be labeled to high precision. Alternative solutions seek to exploit driving simulators that can generate large amounts of labeled data with a plethora of content variations. However, the domain gap between the synthetic and real data remains, raising the following important question: What are the best ways to utilize a self-driving simulator for perception tasks? In this work, we build on top of recent advances in domain-adaptation theory, and fr… Show more

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