A Benchmark for Interactive World Models with a Unified Action Generation Framework
Jianjie Fang, Yingshan Lei, Qin Wan, Ziyou Wang, Yuchao Huang + 6 more
TLDR
iWorld-Bench is a new benchmark with a large dataset and unified framework for evaluating interactive world models' physical interaction abilities.
Key contributions
- Introduces iWorld-Bench, a comprehensive benchmark for interactive world models.
- Constructs a diverse dataset of 330k video clips and 2.1k high-quality samples.
- Proposes an Action Generation Framework to unify evaluation across different model modalities.
- Designs six task types to assess visual generation, trajectory following, and memory capabilities.
Why it matters
This paper introduces iWorld-Bench, a unified benchmark and large-scale dataset to evaluate interactive world models' physical interaction capabilities. It addresses a critical research gap, enabling standardized assessment and accelerating progress towards more adaptive and intelligent agents for AGI.
Original Abstract
Achieving Artificial General Intelligence (AGI) requires agents that learn and interact adaptively, with interactive world models providing scalable environments for perception, reasoning, and action. Yet current research still lacks large-scale datasets and unified benchmarks to evaluate their physical interaction capabilities. To address this, we propose iWorld-Bench, a comprehensive benchmark for training and testing world models on interaction-related abilities such as distance perception and memory. We construct a diverse dataset with 330k video clips and select 2.1k high-quality samples covering varied perspectives, weather, and scenes. As existing world models differ in interaction modalities, we introduce an Action Generation Framework to unify evaluation and design six task types, generating 4.9k test samples. These tasks jointly assess model performance across visual generation, trajectory following, and memory. Evaluating 14 representative world models, we identify key limitations and provide insights for future research. The iWorld-Bench model leaderboard is publicly available at iWorld-Bench.com.
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