VL-LN-Bench basemodel
This repository contains the base model for the paper VL-LN Bench: Towards Long-horizon Goal-oriented Navigation with Active Dialogs.
Model Description
VL-LN Bench is the first benchmark for Interactive Instance Object Navigation (IION), where an embodied agent must locate a specific object instance in a realistic 3D home while engaging in free-form natural-language dialogue. It also provides an automated data-collection pipeline that generates large-scale training data for learning interactive navigation behaviors. Using this dataset, we train an IION base model that shares the same architecture as InternVLA-N1.
The resulting model demonstrates baseline competence on IION: it can search for a specific instance in previously unseen environments. During exploration, the agent can either move by predicting a pixel-goal waypoint or ask a question to reduce ambiguity and improve task success and efficiency.
Resources
Usage
For inference and evaluation, please refer to the VL-LN-Bench repository.
Citation
If you find our work helpful, please cite:
@misc{huang2025vllnbenchlonghorizongoaloriented,
title={VL-LN Bench: Towards Long-horizon Goal-oriented Navigation with Active Dialogs},
author={Wensi Huang and Shaohao Zhu and Meng Wei and Jinming Xu and Xihui Liu and Hanqing Wang and Tai Wang and Feng Zhao and Jiangmiao Pang},
year={2025},
eprint={2512.22342},
archivePrefix={arXiv},
primaryClass={cs.RO},
url={https://arxiv.org/abs/2512.22342},
}