JSAI2024

Presentation information

Poster Session

Poster session » Poster session

[4Xin2] Poster session 2

Fri. May 31, 2024 12:00 PM - 1:40 PM Room X (Event hall 1)

[4Xin2-14] Validation of ChatGPT's object co-occurrence information using a 3D scene-space dataset

〇Kenta Gunji1, Kazunori Ohno1, Shuhei Kurita2, Ken Sakurada3, Yoshito Okada1, Satoshi Tadokoro1 (1.Tohoku university, 2.RIKEN Center for Advanced Intelligence Project , 3.AIST Artificial Intelligence Research Center)

Keywords:LLM, Intelligent Robotics

For a robot to operate in a human workspace, information about the co-occurrence of objects in space and the associated concept of location is essential. Recently, large-scale language models such as ChatGPT know object co-occurrence and can elicit information about the co-occurrence between objects in a dialogue.
However, the validity of the co-occurrence answers provided by LLMs has not yet been verified.
Therefore, we use ScanNet v2, a spatial dataset with object annotations, to validate the co-occurrence information generated by ChatGPT.
This paper determines the co-occurrence based on the object location domain in ScanNet v2.
After ChatGPT had provided preliminary information about Sacnnet V2, questions about co-occurrence between objects were asked, and co-occurrence information was generated.
The verification results showed that the F value of the co-occurrence of ChatGPT was 0.634 when the co-occurrence by ScanNet v2 was the actual value.
It was also found that ChatGPT tended to have more false positive predictions but fewer false negatives.

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