Object-Oriented Grid Mapping in Dynamic Environments
Matti Pekkanen, Francesco Verdoja, and Ville Kyrki

TL;DR
This paper introduces an object-oriented approach to grid mapping that models object-level correlations, improving map accuracy in dynamic environments and enabling removal of occluded objects through joint estimation of latent variables.
Contribution
It generalizes grid map updates by modeling object relationships with latent variables, enhancing map accuracy and dynamic object handling.
Findings
Better map quality in dynamic environments
Effective removal of occluded objects
Improved localization accuracy
Abstract
Grid maps, especially occupancy grid maps, are ubiquitous in many mobile robot applications. To simplify the process of learning the map, grid maps subdivide the world into a grid of cells whose occupancies are independently estimated using measurements in the perceptual field of the particular cell. However, the world consists of objects that span multiple cells, which means that measurements falling onto a cell provide evidence of the occupancy of other cells belonging to the same object. Current models do not capture this correlation and, therefore, do not use object-level information for estimating the state of the environment. In this work, we present a way to generalize the update of grid maps, relaxing the assumption of independence. We propose modeling the relationship between the measurements and the occupancy of each cell as a set of latent variables and jointly estimate those…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Advanced Image and Video Retrieval Techniques · Optimization and Search Problems
