Enhanced Robot Planning and Perception through Environment Prediction
Vishnu Dutt Sharma

TL;DR
This paper introduces learning-based prediction methods for mobile robots to enhance navigation and perception by modeling environmental patterns, both static and dynamic, leading to safer and more efficient operation.
Contribution
It presents novel learning-based techniques for environment prediction using geometrical, structural, and spatiotemporal patterns, improving robotic navigation and perception capabilities.
Findings
Effective modeling of environment patterns improves map prediction accuracy.
Task-specific learning accelerates indoor navigation with occupancy prediction.
Graph neural networks enable scalable decentralized coordination for dynamic tasks.
Abstract
Mobile robots rely on maps to navigate through an environment. In the absence of any map, the robots must build the map online from partial observations as they move in the environment. Traditional methods build a map using only direct observations. In contrast, humans identify patterns in the observed environment and make informed guesses about what to expect ahead. Modeling these patterns explicitly is difficult due to the complexity of the environments. However, these complex models can be approximated well using learning-based methods in conjunction with large training data. By extracting patterns, robots can use direct observations and predictions of what lies ahead to better navigate an unknown environment. In this dissertation, we present several learning-based methods to equip mobile robots with prediction capabilities for efficient and safer operation. In the first part of the…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Robotics and Automated Systems · Robotics and Sensor-Based Localization
