2022
DOI: 10.48550/arxiv.2203.07060
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MotionSC: Data Set and Network for Real-Time Semantic Mapping in Dynamic Environments

Abstract: This work addresses a gap in semantic scene completion (SSC) data by creating a novel outdoor data set with accurate and complete dynamic scenes. Our data set is formed from randomly sampled views of the world at each time step, which supervises generalizability to complete scenes without occlusions or traces. We create SSC baselines from state-of-the-art open source networks and construct a benchmark real-time dense local semantic mapping algorithm, MotionSC, by leveraging recent 3D deep learning architecture… Show more

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