Walk2Map: Extracting Floor Plans from Indoor Walk Trajectories
Claudio Mura, Renato Pajarola, Konrad Schindler, Niloy Mitra

TL;DR
Walk2Map introduces a scalable, data-driven method to generate indoor floor plans from walking trajectories captured by smartphones, reducing reliance on lengthy 3D data workflows and enabling rapid indoor space modeling.
Contribution
This work is the first to learn the relationship between indoor walk trajectories and detailed floor plan features using neural networks, enabling automatic indoor mapping from minimal input data.
Findings
Effective in generating accurate floor plans from real-world trajectories
Outperforms baseline image translation methods in qualitative and quantitative evaluations
Demonstrates scalability using consumer smartphone inertial data
Abstract
Recent years have seen a proliferation of new digital products for the efficient management of indoor spaces, with important applications like emergency management, virtual property showcasing and interior design. These products rely on accurate 3D models of the environments considered, including information on both architectural and non-permanent elements. These models must be created from measured data such as RGB-D images or 3D point clouds, whose capture and consolidation involves lengthy data workflows. This strongly limits the rate at which 3D models can be produced, preventing the adoption of many digital services for indoor space management. We provide an alternative to such data-intensive procedures by presenting Walk2Map, a data-driven approach to generate floor plans only from trajectories of a person walking inside the rooms. Thanks to recent advances in data-driven inertial…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Video Surveillance and Tracking Methods · Advanced Vision and Imaging
