Saved in:
Bibliographic Details
Main Authors: Zhu, Jun, Du, Zihao, Xu, Haotian, Lan, Fengbo, Zheng, Zilong, Ma, Bo, Wang, Shengjie, Zhang, Tao
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.09053
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866914950396510208
author Zhu, Jun
Du, Zihao
Xu, Haotian
Lan, Fengbo
Zheng, Zilong
Ma, Bo
Wang, Shengjie
Zhang, Tao
author_facet Zhu, Jun
Du, Zihao
Xu, Haotian
Lan, Fengbo
Zheng, Zilong
Ma, Bo
Wang, Shengjie
Zhang, Tao
contents Task-aware navigation continues to be a challenging area of research, especially in scenarios involving open vocabulary. Previous studies primarily focus on finding suitable locations for task completion, often overlooking the importance of the robot's pose. However, the robot's orientation is crucial for successfully completing tasks because of how objects are arranged (e.g., to open a refrigerator door). Humans intuitively navigate to objects with the right orientation using semantics and common sense. For instance, when opening a refrigerator, we naturally stand in front of it rather than to the side. Recent advances suggest that Vision-Language Models (VLMs) can provide robots with similar common sense. Therefore, we develop a VLM-driven method called Navigation-to-Gaze (Navi2Gaze) for efficient navigation and object gazing based on task descriptions. This method uses the VLM to score and select the best pose from numerous candidates automatically. In evaluations on multiple photorealistic simulation benchmarks, Navi2Gaze significantly outperforms existing approaches by precisely determining the optimal orientation relative to target objects, resulting in a 68.8% reduction in Distance to Goal (DTG). Real-world video demonstrations can be found on the supplementary website
format Preprint
id arxiv_https___arxiv_org_abs_2407_09053
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Navi2Gaze: Leveraging Foundation Models for Navigation and Target Gazing
Zhu, Jun
Du, Zihao
Xu, Haotian
Lan, Fengbo
Zheng, Zilong
Ma, Bo
Wang, Shengjie
Zhang, Tao
Robotics
Task-aware navigation continues to be a challenging area of research, especially in scenarios involving open vocabulary. Previous studies primarily focus on finding suitable locations for task completion, often overlooking the importance of the robot's pose. However, the robot's orientation is crucial for successfully completing tasks because of how objects are arranged (e.g., to open a refrigerator door). Humans intuitively navigate to objects with the right orientation using semantics and common sense. For instance, when opening a refrigerator, we naturally stand in front of it rather than to the side. Recent advances suggest that Vision-Language Models (VLMs) can provide robots with similar common sense. Therefore, we develop a VLM-driven method called Navigation-to-Gaze (Navi2Gaze) for efficient navigation and object gazing based on task descriptions. This method uses the VLM to score and select the best pose from numerous candidates automatically. In evaluations on multiple photorealistic simulation benchmarks, Navi2Gaze significantly outperforms existing approaches by precisely determining the optimal orientation relative to target objects, resulting in a 68.8% reduction in Distance to Goal (DTG). Real-world video demonstrations can be found on the supplementary website
title Navi2Gaze: Leveraging Foundation Models for Navigation and Target Gazing
topic Robotics
url https://arxiv.org/abs/2407.09053