要約
屋内ナビゲーションは、複雑なレイアウト、GPSシグナルの欠如、アクセシビリティの懸念による独自の課題を提示します。
既存のソリューションは、多くの場合、リアルタイムの適応性とユーザー固有のニーズに苦しんでいます。
In this work, we explore the potential of a Large Language Model (LLM), i.e., ChatGPT, to generate natural, context-aware navigation instructions from indoor map images.
We design and evaluate test cases across different real-world environments, analyzing the effectiveness of LLMs in interpreting spatial layouts, handling user constraints, and planning efficient routes.
Our findings demonstrate the potential of LLMs for supporting personalized indoor navigation, with an average of 50.54% correct indications and a maximum of 77.78%.
The results do not appear to depend on the complexity of the layout or the complexity of the expected path, but rather on the number of points of interest and the abundance of visual information, which negatively affect the performance.
要約(オリジナル)
Indoor navigation presents unique challenges due to complex layouts, lack of GPS signals, and accessibility concerns. Existing solutions often struggle with real-time adaptability and user-specific needs. In this work, we explore the potential of a Large Language Model (LLM), i.e., ChatGPT, to generate natural, context-aware navigation instructions from indoor map images. We design and evaluate test cases across different real-world environments, analyzing the effectiveness of LLMs in interpreting spatial layouts, handling user constraints, and planning efficient routes. Our findings demonstrate the potential of LLMs for supporting personalized indoor navigation, with an average of 50.54% correct indications and a maximum of 77.78%. The results do not appear to depend on the complexity of the layout or the complexity of the expected path, but rather on the number of points of interest and the abundance of visual information, which negatively affect the performance.
arxiv情報
著者 | Alberto Coffrini,Mohammad Amin Zadenoori,Paolo Barsocchi,Francesco Furfari,Antonino Crivello,Alessio Ferrari |
発行日 | 2025-03-24 11:42:16+00:00 |
arxivサイト | arxiv_id(pdf) |
提供元, 利用サービス
arxiv.jp, Google