Online Hybrid-Belief POMDP with Coupled Semantic-Geometric Models
Tuvy Lemberg, Vadim Indelman

TL;DR
This paper introduces a hybrid belief framework for POMDPs that integrates semantic and geometric models, enabling efficient planning and safety estimation in complex environments with coupled variables.
Contribution
It develops a novel hybrid belief representation and sampling method for POMDPs that accounts for semantic-geometric coupling, improving computational efficiency.
Findings
Efficient estimation of value function and safety probability with polynomial complexity.
Simulation results show comparable accuracy to exhaustive methods.
The approach enables safer robot planning in complex environments.
Abstract
Robots operating in complex and unknown environments frequently require geometric-semantic representations of the environment to safely perform their tasks. While inferring the environment, they must account for many possible scenarios when planning future actions. Since objects' class types are discrete and the robot's self-pose and the objects' poses are continuous, the environment can be represented by a hybrid discrete-continuous belief which is updated according to models and incoming data. Prior probabilities and observation models representing the environment can be learned from data using deep learning algorithms. Such models often couple environmental semantic and geometric properties. As a result, semantic variables are interconnected, causing semantic state space dimensionality to increase exponentially. In this paper, we consider planning under uncertainty using partially…
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Taxonomy
TopicsNetwork Security and Intrusion Detection
