iSDF: Real-Time Neural Signed Distance Fields for Robot Perception


Joseph Ortiz (Imperial College London),
Alexander Clegg (Facebook AI Research),
Jing Dong (Facebook),
Edgar A Sucar (Imperial College London),
David Novotny (Facebook AI Research),
Michael Zollhöfer (Facebook Reality Labs),
Mustafa Mukadam (Facebook AI Research)
Paper Website
Paper #012
Session 2. Short talks


Abstract

We present iSDF, a continual learning system for real-time signed distance field (SDF) reconstruction. Given a stream of posed depth images from a moving camera, it trains a randomly initialised neural network to map input 3D coordinate to approximate signed distance. The model is self-supervised by minimising a loss that bounds the predicted signed distance using the distance to the closest sampled point in a batch of query points that are actively sampled. In contrast to prior work based on voxel grids, our neural method is able to provide adaptive levels of detail with plausible filling in of partially observed regions and denoising of observations, all while having a more compact representation. In evaluations against alternative methods on real and synthetic datasets of indoor environments, we find that iSDF produces more accurate reconstructions, and better approximations of collision costs and gradients useful for downstream planners in domains from navigation to manipulation. Code and video results can be found at our project page: https://joeaortiz.github.io/iSDF/.

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