iMAP: Implicit Mapping and Positioning in Real-Time
Edgar Sucar, Shikun Liu, Joseph Ortiz, Andrew J. Davison
3/23/2021
Keywords: Camera Parameter Estimation, Robotics, Multi-task/Continual/Transfer learning, Sampling
Venue: ICCV 2021
Bibtex:
@inproceedings{sucar2021imap,
booktitle = {Proceedings of the IEEE International Conference on Computer Vision (ICCV)},
author = {Edgar Sucar and Shikun Liu and Joseph Ortiz and Andrew J. Davison},
title = {iMAP: Implicit Mapping and Positioning in Real-Time},
year = {2021},
url = {http://arxiv.org/abs/2103.12352v2},
entrytype = {inproceedings},
id = {sucar2021imap}
}
Abstract
We show for the first time that a multilayer perceptron (MLP) can serve as the only scene representation in a real-time SLAM system for a handheld RGB-D camera. Our network is trained in live operation without prior data, building a dense, scene-specific implicit 3D model of occupancy and colour which is also immediately used for tracking. Achieving real-time SLAM via continual training of a neural network against a live image stream requires significant innovation. Our iMAP algorithm uses a keyframe structure and multi-processing computation flow, with dynamic information-guided pixel sampling for speed, with tracking at 10 Hz and global map updating at 2 Hz. The advantages of an implicit MLP over standard dense SLAM techniques include efficient geometry representation with automatic detail control and smooth, plausible filling-in of unobserved regions such as the back surfaces of objects.
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