2022
DOI: 10.48550/arxiv.2201.02533
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NeROIC: Neural Rendering of Objects from Online Image Collections

Abstract: We present a novel method to acquire object representations from online image collections, capturing high-quality geometry and material properties of arbitrary objects from photographs with varying cameras, illumination, and backgrounds. This enables various object-centric rendering applications such as novel-view synthesis, relighting, and harmonized background composition from challenging in-thewild input. Using a multi-stage approach extending neural radiance fields, we first infer the surface geometry and … Show more

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