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NEUSIS: A Compositional Neuro-Symbolic Framework for Autonomous Perception, Reasoning, and Planning in Complex UAV Search Missions

Authors :
Cai, Zhixi
Cardenas, Cristian Rojas
Leo, Kevin
Zhang, Chenyuan
Backman, Kal
Li, Hanbing
Li, Boying
Ghorbanali, Mahsa
Datta, Stavya
Qu, Lizhen
Santiago, Julian Gutierrez
Ignatiev, Alexey
Li, Yuan-Fang
Vered, Mor
Stuckey, Peter J
de la Banda, Maria Garcia
Rezatofighi, Hamid
Publication Year :
2024

Abstract

This paper addresses the problem of autonomous UAV search missions, where a UAV must locate specific Entities of Interest (EOIs) within a time limit, based on brief descriptions in large, hazard-prone environments with keep-out zones. The UAV must perceive, reason, and make decisions with limited and uncertain information. We propose NEUSIS, a compositional neuro-symbolic system designed for interpretable UAV search and navigation in realistic scenarios. NEUSIS integrates neuro-symbolic visual perception, reasoning, and grounding (GRiD) to process raw sensory inputs, maintains a probabilistic world model for environment representation, and uses a hierarchical planning component (SNaC) for efficient path planning. Experimental results from simulated urban search missions using AirSim and Unreal Engine show that NEUSIS outperforms a state-of-the-art (SOTA) vision-language model and a SOTA search planning model in success rate, search efficiency, and 3D localization. These results demonstrate the effectiveness of our compositional neuro-symbolic approach in handling complex, real-world scenarios, making it a promising solution for autonomous UAV systems in search missions.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2409.10196
Document Type :
Working Paper