GeoSim: Realistic Video Simulation via Geometry-Aware Composition for Self-Driving

2021 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION, CVPR 2021(2021)

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摘要
Scalable sensor simulation is an important yet challenging open problem for safety-critical domains such as self-driving. Current works in image simulation either fail to be photorealistic or do not model the 3D environment and the dynamic objects within, losing high-level control and physical realism. In this paper, we present GeoSim, a geometry-aware image composition process which synthesizes novel urban driving scenarios by augmenting existing images with dynamic objects extracted from other scenes and rendered at novel poses. Towards this goal, we first build a diverse bank of 3D objects with both realistic geometry and appearance from sensor data. During simulation, we perform a novel geometry-aware simulation-by-composition procedure which 1) proposes plausible and realistic object placements into a given scene, 2) renders novel views of dynamic objects from the asset bank, and 3) composes and blends the rendered image segments. The resulting synthetic images are realistic, traffic-aware, and geometrically consistent, allowing our approach to scale to complex use cases. We demonstrate two such important applications: long-range realistic video simulation across multiple camera sensors, and synthetic data generation for data augmentation on downstream segmentation tasks. Please check https://tmux.top/publication/geosim/ for high-resolution video results.
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关键词
rendered image segments,resulting synthetic images,traffic-aware,long-range realistic video simulation,multiple camera sensors,data augmentation,high-resolution video results,geometry-aware composition,scalable sensor simulation,open problem,safety-critical domains,current works,image simulation,dynamic objects,high-level control,physical realism,geometry-aware image composition process,urban driving scenarios,existing images,diverse bank,realistic geometry,sensor data,novel geometry-aware simulation-by-composition procedure,realistic object placements
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