Scaling Spatial Intelligence with Multimodal Foundation Models
Zhongang Cai, Ruisi Wang, Chenyang Gu, Fanyi Pu, Junxiang Xu, Yubo Wang, Wanqi Yin, Zhitao Yang, Chen Wei, Qingping Sun, Tongxi Zhou, Jiaqi Li, Hui En Pang, Oscar Qian, Yukun Wei, Zhiqian Lin, Xuanke Shi, Kewang Deng, Xiaoyang Han, Zukai Chen, Xiangyu Fan, Hanming Deng, Lewei Lu

TL;DR
This paper enhances multimodal foundation models with spatial intelligence by scaling data and models, achieving state-of-the-art results across multiple benchmarks and analyzing emergent capabilities.
Contribution
It introduces the SenseNova-SI model family trained on 8 million diverse samples, demonstrating significant improvements in spatial reasoning and general multimodal understanding.
Findings
SenseNova-SI achieves 68.8% on VSI-Bench.
Model demonstrates early signs of emergent generalization.
Training on diverse data improves spatial reasoning capabilities.
Abstract
Despite remarkable progress, multimodal foundation models still exhibit surprising deficiencies in spatial intelligence. In this work, we explore scaling up multimodal foundation models to cultivate spatial intelligence within the SenseNova-SI family, built upon established multimodal foundations including visual understanding models (i.e., Qwen3-VL and InternVL3) and unified understanding and generation models (i.e., Bagel). We take a principled approach to constructing high-performing and robust spatial intelligence by systematically curating SenseNova-SI-8M: eight million diverse data samples under a rigorous taxonomy of spatial capabilities. SenseNova-SI demonstrates unprecedented performance across a broad range of spatial intelligence benchmarks: 68.8% on VSI-Bench, 43.3% on MMSI, 85.7% on MindCube, 54.7% on ViewSpatial, 47.7% on SITE, 63.9% on BLINK, 55.5% on 3DSR, and 72.0% on…
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Code & Models
- 🤗sensenova/SenseNova-SI-1.1-InternVL3-8Bmodel· 400 dl· ♡ 15400 dl♡ 15
- 🤗sensenova/SenseNova-SI-1.5-InternVL3-8Bmodel· 4.1k dl· ♡ 64.1k dl♡ 6
- 🤗sensenova/SenseNova-SI-1.1-InternVL3-2Bmodel· 127 dl· ♡ 7127 dl♡ 7
- 🤗sensenova/SenseNova-SI-1.1-Qwen3-VL-8Bmodel· 264 dl· ♡ 6264 dl♡ 6
- 🤗sensenova/SenseNova-SI-1.2-InternVL3-8Bmodel· 136 dl· ♡ 11136 dl♡ 11
- 🤗sensenova/SenseNova-SI-1.1-Qwen2.5-VL-7Bmodel· 161 dl· ♡ 5161 dl♡ 5
- 🤗sensenova/SenseNova-SI-1.1-Qwen2.5-VL-3Bmodel· 226 dl· ♡ 5226 dl♡ 5
- 🤗sensenova/SenseNova-SI-1.1-InternVL3-8B-800Kmodel· 18 dl· ♡ 418 dl♡ 4
- 🤗sensenova/SenseNova-SI-1.1-BAGEL-7B-MoTmodel· 58 dl· ♡ 558 dl♡ 5
- 🤗sensenova/SenseNova-SI-1.3-InternVL3-8Bmodel· 287 dl· ♡ 10287 dl♡ 10
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