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Bibliographic Details
Main Authors: Pan, Sicong, Jin, Liren, Hu, Hao, Popović, Marija, Bennewitz, Maren
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2310.00684
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author Pan, Sicong
Jin, Liren
Hu, Hao
Popović, Marija
Bennewitz, Maren
author_facet Pan, Sicong
Jin, Liren
Hu, Hao
Popović, Marija
Bennewitz, Maren
contents Neural Radiance Fields (NeRFs) are gaining significant interest for online active object reconstruction due to their exceptional memory efficiency and requirement for only posed RGB inputs. Previous NeRF-based view planning methods exhibit computational inefficiency since they rely on an iterative paradigm, consisting of (1) retraining the NeRF when new images arrive; and (2) planning a path to the next best view only. To address these limitations, we propose a non-iterative pipeline based on the Prediction of the Required number of Views (PRV). The key idea behind our approach is that the required number of views to reconstruct an object depends on its complexity. Therefore, we design a deep neural network, named PRVNet, to predict the required number of views, allowing us to tailor the data acquisition based on the object complexity and plan a globally shortest path. To train our PRVNet, we generate supervision labels using the ShapeNet dataset. Simulated experiments show that our PRV-based view planning method outperforms baselines, achieving good reconstruction quality while significantly reducing movement cost and planning time. We further justify the generalization ability of our approach in a real-world experiment.
format Preprint
id arxiv_https___arxiv_org_abs_2310_00684
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle How Many Views Are Needed to Reconstruct an Unknown Object Using NeRF?
Pan, Sicong
Jin, Liren
Hu, Hao
Popović, Marija
Bennewitz, Maren
Robotics
Neural Radiance Fields (NeRFs) are gaining significant interest for online active object reconstruction due to their exceptional memory efficiency and requirement for only posed RGB inputs. Previous NeRF-based view planning methods exhibit computational inefficiency since they rely on an iterative paradigm, consisting of (1) retraining the NeRF when new images arrive; and (2) planning a path to the next best view only. To address these limitations, we propose a non-iterative pipeline based on the Prediction of the Required number of Views (PRV). The key idea behind our approach is that the required number of views to reconstruct an object depends on its complexity. Therefore, we design a deep neural network, named PRVNet, to predict the required number of views, allowing us to tailor the data acquisition based on the object complexity and plan a globally shortest path. To train our PRVNet, we generate supervision labels using the ShapeNet dataset. Simulated experiments show that our PRV-based view planning method outperforms baselines, achieving good reconstruction quality while significantly reducing movement cost and planning time. We further justify the generalization ability of our approach in a real-world experiment.
title How Many Views Are Needed to Reconstruct an Unknown Object Using NeRF?
topic Robotics
url https://arxiv.org/abs/2310.00684