Fisher Information Field: an Efficient and Differentiable Map for Perception-aware Planning
Zichao Zhang, Davide Scaramuzza

TL;DR
This paper introduces the Fisher Information Field, a novel, efficient, and differentiable map representation that enables rapid and accurate perception-aware motion planning by quantifying visual localization information in known environments.
Contribution
The paper presents the first dedicated Fisher information map for 6-DoF visual localization, enabling constant-time computation and improved trajectory optimization in perception-aware planning.
Findings
Fisher Information Field is at least ten times faster than point cloud methods.
The map representation is differentiable, enhancing trajectory optimization.
Experimental results validate the approach across different planning algorithms.
Abstract
Considering visual localization accuracy at the planning time gives preference to robot motion that can be better localized and thus has the potential of improving vision-based navigation, especially in visually degraded environments. To integrate the knowledge about localization accuracy in motion planning algorithms, a central task is to quantify the amount of information that an image taken at a 6 degree-of-freedom pose brings for localization, which is often represented by the Fisher information. However, computing the Fisher information from a set of sparse landmarks (i.e., a point cloud), which is the most common map for visual localization, is inefficient. This approach scales linearly with the number of landmarks in the environment and does not allow the reuse of the computed Fisher information. To overcome these drawbacks, we propose the first dedicated map representation for…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Robotic Path Planning Algorithms · Advanced Image and Video Retrieval Techniques
