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Main Authors: Lambert, John, Li, Yuguang, Boyadzhiev, Ivaylo, Wixson, Lambert, Narayana, Manjunath, Hutchcroft, Will, Hays, James, Dellaert, Frank, Kang, Sing Bing
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.19390
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author Lambert, John
Li, Yuguang
Boyadzhiev, Ivaylo
Wixson, Lambert
Narayana, Manjunath
Hutchcroft, Will
Hays, James
Dellaert, Frank
Kang, Sing Bing
author_facet Lambert, John
Li, Yuguang
Boyadzhiev, Ivaylo
Wixson, Lambert
Narayana, Manjunath
Hutchcroft, Will
Hays, James
Dellaert, Frank
Kang, Sing Bing
contents We propose a new system for automatic 2D floorplan reconstruction that is enabled by SALVe, our novel pairwise learned alignment verifier. The inputs to our system are sparsely located 360$^\circ$ panoramas, whose semantic features (windows, doors, and openings) are inferred and used to hypothesize pairwise room adjacency or overlap. SALVe initializes a pose graph, which is subsequently optimized using GTSAM. Once the room poses are computed, room layouts are inferred using HorizonNet, and the floorplan is constructed by stitching the most confident layout boundaries. We validate our system qualitatively and quantitatively as well as through ablation studies, showing that it outperforms state-of-the-art SfM systems in completeness by over 200%, without sacrificing accuracy. Our results point to the significance of our work: poses of 81% of panoramas are localized in the first 2 connected components (CCs), and 89% in the first 3 CCs. Code and models are publicly available at https://github.com/zillow/salve.
format Preprint
id arxiv_https___arxiv_org_abs_2406_19390
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle SALVe: Semantic Alignment Verification for Floorplan Reconstruction from Sparse Panoramas
Lambert, John
Li, Yuguang
Boyadzhiev, Ivaylo
Wixson, Lambert
Narayana, Manjunath
Hutchcroft, Will
Hays, James
Dellaert, Frank
Kang, Sing Bing
Computer Vision and Pattern Recognition
We propose a new system for automatic 2D floorplan reconstruction that is enabled by SALVe, our novel pairwise learned alignment verifier. The inputs to our system are sparsely located 360$^\circ$ panoramas, whose semantic features (windows, doors, and openings) are inferred and used to hypothesize pairwise room adjacency or overlap. SALVe initializes a pose graph, which is subsequently optimized using GTSAM. Once the room poses are computed, room layouts are inferred using HorizonNet, and the floorplan is constructed by stitching the most confident layout boundaries. We validate our system qualitatively and quantitatively as well as through ablation studies, showing that it outperforms state-of-the-art SfM systems in completeness by over 200%, without sacrificing accuracy. Our results point to the significance of our work: poses of 81% of panoramas are localized in the first 2 connected components (CCs), and 89% in the first 3 CCs. Code and models are publicly available at https://github.com/zillow/salve.
title SALVe: Semantic Alignment Verification for Floorplan Reconstruction from Sparse Panoramas
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2406.19390