Realistic Pedestrian Shadow Generation by 2D-to-3D Object-Lifting

APWCS(2023)

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摘要
This paper studies the shadow generation problem in an outdoor street scene. Previous methods only rely on GAN-based model with the sun position to reconstruct the street view. Lacking in related dataset, we propose an evaluation method to make sure of the effectiveness. Our model applies a 2D-to-3D lifting method, casts the 3D object with sun estimation, and finally merges the shadow with a predicted sun brightness. Limited with lifting objects, our model casts more precise shadows than GAN-based model. Tuning with the brightness, the cast shadow will be in consistence with the whole street view. Then in our evaluation, we demonstrate better performance over the state-of-the-art models by 0.009 in LPIPS. Therefore, casting with a 3D human object is a feasible solution for shadow generation in the future.
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关键词
Outdoor Scene Synthesis,Human Synthesis,Object Lifting,Shadow Generation
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