Word2Wave: Language Driven Mission Programming for Efficient Subsea Deployments of Marine Robots
Word2Wave: Language Driven Mission Programming for Efficient Subsea Deployments of Marine Robots
This paper explores the design and development of a language-based interface for dynamic mission programming of autonomous underwater vehicles (AUVs). The proposed `Word2Wave' (W2W) framework enables interactive programming and parameter configuration of AUVs for remote subsea missions. The W2W framework includes: (i) a set of novel language rules and command structures for efficient language-to-mission mapping; (ii) a GPT-based prompt engineering module for training data generation; (iii) a small language model (SLM)-based sequence-to-sequence learning pipeline for mission command generation from human speech or text; and (iv) a novel user interface for 2D mission map visualization and human-machine interfacing. The proposed learning pipeline adapts an SLM named T5-Small that can learn language-to-mission mapping from processed language data effectively, providing robust and efficient performance. In addition to a benchmark evaluation with state-of-the-art, we conduct a user interaction study to demonstrate the effectiveness of W2W over commercial AUV programming interfaces. Across participants, W2W-based programming required less than 10\% time for mission programming compared to traditional interfaces; it is deemed to be a simpler and more natural paradigm for subsea mission programming with a usability score of 76.25. W2W opens up promising future research opportunities on hands-free AUV mission programming for efficient subsea deployments.
Ruo Chen、Adnan Abdullah、Md Jahidul Islam、David Blow
计算技术、计算机技术自动化技术、自动化技术设备遥感技术
Ruo Chen,Adnan Abdullah,Md Jahidul Islam,David Blow.Word2Wave: Language Driven Mission Programming for Efficient Subsea Deployments of Marine Robots[EB/OL].(2024-09-26)[2025-04-28].https://arxiv.org/abs/2409.18405.点此复制
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