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MANIPULATION

Task Planning for Mobile Manipulation in Retail Stores using Foundation Models with Iterative Re-planning

Vismay Vakharia, Sanjana Garai, Rolif Lima, Nijil George, Vighnesh Vatsal, Kaushik Das

发表年份
2026
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摘要

Automation in industries such as retail, warehousing and logistics presents opportunities for greater throughput, cost reduction and mitigation of disruptions from labour shortages. Previously, such efforts have focused on back-room operations involving packing and sorting in relatively structured environments. With advances in robotic mobile manipulation hardware and foundation models, automation can now be applied to more variable and human-centric environments such as retail store shelves. In this work, we present a task-planning approach using Large Language Models (LLMs) and Vision-Language Models (VLMs) to address the restocking problem in retail scenarios such as supermarkets. We demonstrate this system on a custom omnidirectional mobile manipulation platform, with user-driven prompts and a feedback-based iterative re-planning approach for error correction. The end-to-end system is validated in a PyBullet simulation environment for pick-and-place tasks.

关键词

cs.RO

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