Sammanfattning

Robotic systems often face execution failures due to unexpected obstacles, sensor errors, or environmental changes. Traditional failure recovery methods rely on predefined strategies or human intervention, making them less adaptable. This paper presents a unified failure recovery framework that combines Vision-Language Models (VLMs), a reactive planner, and Behavior Trees (BTs) to enable real-time failure handling. Our approach includes pre-execution verification, which checks for potential failures before execution, and reactive failure handling, which detects and corrects failures during execution by verifying existing BT conditions, adding missing preconditions and, when necessary, generating new skills. The framework uses a scene graph for structured environmental perception and an execution history for continuous monitoring, enabling context-aware and adaptive failure handling. We evaluate our framework through real-world experiments with an ABB YuMi robot on tasks like peg insertion, object sorting, and drawer placement, as well as in AI2-THOR simulator. Compared to using pre-execution and reactive methods separately, our approach achieves higher task success rates and greater adaptability. Ablation studies highlight the importance of VLM-based reasoning, structured scene representation, and execution history tracking for effective failure recovery in robotics.

Originalspråkengelska
Titel på värdpublikation2025 IEEE 21st International Conference on Automation Science and Engineering, CASE 2025
FörlagIEEE Computer Society
Sidor887-894
Antal sidor8
ISBN (elektroniskt)9798331522469
DOI
StatusPublished - 2025
Evenemang21st IEEE International Conference on Automation Science and Engineering, CASE 2025 - Los Angeles, USA
Varaktighet: 2025 aug. 172025 aug. 21

Konferens

Konferens21st IEEE International Conference on Automation Science and Engineering, CASE 2025
Land/TerritoriumUSA
OrtLos Angeles
Period2025/08/172025/08/21

Ämnesklassifikation (UKÄ)

  • Robotik och automation

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