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Main Authors: Wei, Yuxi, Huang, Wei, Chen, Qirui, Hou, Lu, Qi, Xiaojuan
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.23864
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author Wei, Yuxi
Huang, Wei
Chen, Qirui
Hou, Lu
Qi, Xiaojuan
author_facet Wei, Yuxi
Huang, Wei
Chen, Qirui
Hou, Lu
Qi, Xiaojuan
contents Spatial understanding is fundamental for embodied agents, yet most spatial VLMs and benchmarks remain offline-evaluating post-hoc QA over pre-recorded inputs and overlooking two crucial deployment-critical requirements: long-horizon streaming inference and active perception when the current view is insufficient. To address this gap, we introduce S3-Bench, a benchmark suite for streaming spatial question answering with active exploration, where queries are temporally grounded to specific timestamps and must be answered using only observations available up to that moment. S3-Bench adopts a dual-domain design, combining a scalable simulator with controllable trajectories and exploration actions, and real-world streaming videos that capture practical sensing artifacts for rigorous generalization evaluation. Overall, it spans 10K+ scenes and 26K+ trajectories, with dedicated training (S3-Train) and evaluation (S3-Eval) splits. We further propose AMF-VLM, which supports streaming spatial reasoning under bounded computing via (i) memory folding, which compresses long-horizon observations into compact structured memory, and (ii) active exploration, which outputs explicit actions (e.g. move/rotate/scan) to acquire missing evidence before answering. Extensive experiments demonstrate that, compared to models using identical training data, our approach yields improvements of 8.8% and 13.3% on the simulated and real splits of S3-Eval, respectively, while maintaining competitive transferability to standard spatial benchmarks.
format Preprint
id arxiv_https___arxiv_org_abs_2603_23864
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle See, Remember, Explore: A Benchmark and Baselines for Streaming Spatial Reasoning
Wei, Yuxi
Huang, Wei
Chen, Qirui
Hou, Lu
Qi, Xiaojuan
Computer Vision and Pattern Recognition
Spatial understanding is fundamental for embodied agents, yet most spatial VLMs and benchmarks remain offline-evaluating post-hoc QA over pre-recorded inputs and overlooking two crucial deployment-critical requirements: long-horizon streaming inference and active perception when the current view is insufficient. To address this gap, we introduce S3-Bench, a benchmark suite for streaming spatial question answering with active exploration, where queries are temporally grounded to specific timestamps and must be answered using only observations available up to that moment. S3-Bench adopts a dual-domain design, combining a scalable simulator with controllable trajectories and exploration actions, and real-world streaming videos that capture practical sensing artifacts for rigorous generalization evaluation. Overall, it spans 10K+ scenes and 26K+ trajectories, with dedicated training (S3-Train) and evaluation (S3-Eval) splits. We further propose AMF-VLM, which supports streaming spatial reasoning under bounded computing via (i) memory folding, which compresses long-horizon observations into compact structured memory, and (ii) active exploration, which outputs explicit actions (e.g. move/rotate/scan) to acquire missing evidence before answering. Extensive experiments demonstrate that, compared to models using identical training data, our approach yields improvements of 8.8% and 13.3% on the simulated and real splits of S3-Eval, respectively, while maintaining competitive transferability to standard spatial benchmarks.
title See, Remember, Explore: A Benchmark and Baselines for Streaming Spatial Reasoning
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.23864