One-Shot View Planning for Fast and Complete Unknown Object Reconstruction
Current view planning (VP) systems usually adopt an iterative pipeline with next-best-view (NBV) methods that can autonomously perform 3D reconstruction of unknown objects. However, they are slowed down by local path planning, which is improved by our previously proposed set-covering-based network SCVP using one-shot view planning and global path planning. In this work, we propose a combined pipeline that selects a few NBVs before activating the network to improve model completeness. However, this pipeline will result in more views than expected because the SCVP has not been trained from multiview scenarios. To reduce the overall number of views and paths required, we propose a multiview-activated architecture MA-SCVP and an efficient dataset sampling method for view planning based on a long-tail distribution. Ablation studies confirm the optimal network architecture, the sampling method and the number of samples, the NBV method and the number of NBVs in our combined pipeline. Comparative experiments support the claim that our system achieves faster and more complete reconstruction than state-of-the-art systems. For the reference of the community, we make the source codes public.
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