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Main Authors: Walczak, Mikolaj, Kallakuri, Uttej, Mohsenin, Tinoosh
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.10784
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author Walczak, Mikolaj
Kallakuri, Uttej
Mohsenin, Tinoosh
author_facet Walczak, Mikolaj
Kallakuri, Uttej
Mohsenin, Tinoosh
contents Autonomous systems deployed on edge devices face significant challenges, including resource constraints, real-time processing demands, and adapting to dynamic environments. This work introduces ATLASv2, a novel system that integrates a fine-tuned TinyLLM, real-time object detection, and efficient path planning to enable hierarchical, multi-task navigation and manipulation all on the edge device, Jetson Nano. ATLASv2 dynamically expands its navigable landmarks by detecting and localizing objects in the environment which are saved to its internal knowledge base to be used for future task execution. We evaluate ATLASv2 in real-world environments, including a handcrafted home and office setting constructed with diverse objects and landmarks. Results show that ATLASv2 effectively interprets natural language instructions, decomposes them into low-level actions, and executes tasks with high success rates. By leveraging generative AI in a fully on-board framework, ATLASv2 achieves optimized resource utilization with minimal prompting latency and power consumption, bridging the gap between simulated environments and real-world applications.
format Preprint
id arxiv_https___arxiv_org_abs_2504_10784
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle ATLASv2: LLM-Guided Adaptive Landmark Acquisition and Navigation on the Edge
Walczak, Mikolaj
Kallakuri, Uttej
Mohsenin, Tinoosh
Robotics
Artificial Intelligence
Autonomous systems deployed on edge devices face significant challenges, including resource constraints, real-time processing demands, and adapting to dynamic environments. This work introduces ATLASv2, a novel system that integrates a fine-tuned TinyLLM, real-time object detection, and efficient path planning to enable hierarchical, multi-task navigation and manipulation all on the edge device, Jetson Nano. ATLASv2 dynamically expands its navigable landmarks by detecting and localizing objects in the environment which are saved to its internal knowledge base to be used for future task execution. We evaluate ATLASv2 in real-world environments, including a handcrafted home and office setting constructed with diverse objects and landmarks. Results show that ATLASv2 effectively interprets natural language instructions, decomposes them into low-level actions, and executes tasks with high success rates. By leveraging generative AI in a fully on-board framework, ATLASv2 achieves optimized resource utilization with minimal prompting latency and power consumption, bridging the gap between simulated environments and real-world applications.
title ATLASv2: LLM-Guided Adaptive Landmark Acquisition and Navigation on the Edge
topic Robotics
Artificial Intelligence
url https://arxiv.org/abs/2504.10784