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DriveGAN: Towards a Controllable High-Quality Neural Simulation

Seung Wook Kim, Jonah Philion, Antonio Torralba, Sanja Fidler

发表年份
2021
引用次数
2

摘要

Realistic simulators are critical for training and verifying robotics systems. While most of the contemporary simulators are hand-crafted, a scaleable way to build simulators is to use machine learning to learn how the environment behaves in response to an action, directly from data. In this work, we aim to learn to simulate a dynamic environment directly in pixel-space, by watching unannotated sequences of frames and their associated actions. We introduce a novel high-quality neural simulator referred to as DriveGAN that achieves controllability by disentangling different components without supervision. In addition to steering controls, it also includes controls for sampling features of a scene, such as the weather as well as the location of non-player objects. Since DriveGAN is a fully differentiable simulator, it further allows for re-simulation of a given video sequence, offering an agent to drive through a recorded scene again, possibly taking different actions. We train DriveGAN on multiple datasets, including 160 hours of real-world driving data. We showcase that our approach greatly surpasses the performance of previous data-driven simulators, and al-lows for new key features not explored before.

关键词

Computer scienceControllabilityArtificial intelligenceAction (physics)RoboticsQuality (philosophy)Sequence (biology)Machine learningRobot

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