Semantic Belief Behavior Graph: Enabling Autonomous Robot Inspection in Unknown Environments
Muhammad Fadhil Ginting, David D Fan, Sung-Kyun Kim, Mykel Kochenderfer, Ali-akbar Agha-mohammadi
Abstract
This paper addresses the problem of autonomous robotic inspection in complex and unknown environments. This capability is crucial for efficient and precise inspections in various real-world scenarios, even when faced with perceptual uncertainty and lack of prior knowledge of the environment. Existing methods for real-world autonomous inspections typ- ically rely on predefined targets and waypoints and often fail to adapt to dynamic or unknown settings. In this paper, we introduce the Semantic Belief Behavior Graph (SB2G) framework as a new approach to semantic-aware autonomous robot inspection. SB2G generates a control policy for the robot, using behavior nodes that encapsulate various semantic-based policies designed for inspecting different classes of objects. We design an active semantic search behavior to guide the robot in locating objects for inspection while reducing semantic infor- mation uncertainty. The edges in the SB2G encode transitions between these behaviors. We validate our approach through simulation and real-world urban inspections using a legged robotic platform. Our results show that SB2G enables a more efficient object inspection policy, exhibiting similar behaviors comparable to human-operated inspections.