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Leveraging Stereo Prior for Generalizable Novel-View Synthesis

Title
Leveraging Stereo Prior for Generalizable Novel-View Synthesis
Authors
이해찬
Date Issued
2024
Abstract
In this thesis, we propose the first generalizable view synthesis approach that exploits stereo images. Since recent stereo matching has demonstrated accurate geometry prediction, we introduce stereo matching into novel-view synthesis for high-quality geometry reconstruction. To this end, this thesis proposes a novel framework, dubbed StereoNeRF, which integrates stereo matching into a NeRF-based generalizable view synthesis approach. StereoNeRF is equipped with three key components to effectively exploit stereo matching in novel-view synthesis: a stereo feature extractor, a depth-guided plane-sweeping, and a stereo depth loss. Moreover, we propose the StereoNVS dataset, the first multi-view dataset of stereo images, encompassing a wide variety of both real and synthetic scenes. Our experimental results demonstrate that StereoNeRF surpasses previous approaches in generalizable view synthesis.
URI
http://postech.dcollection.net/common/orgView/200000733307
https://oasis.postech.ac.kr/handle/2014.oak/123405
Article Type
Thesis
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