AICLCVJun 28, 2025

MARBLE: A Hard Benchmark for Multimodal Spatial Reasoning and Planning

arXiv:2506.22992v11 citationsh-index: 12
Originality Incremental advance
AI Analysis

This addresses the problem of evaluating and improving multimodal reasoning for AI researchers, though it is incremental as it builds on existing benchmark efforts.

The authors tackled the challenge of complex multimodal reasoning by introducing MARBLE, a benchmark with tasks M-Portal and M-Cube that require step-by-step planning under spatial, visual, and physical constraints, and found that 12 advanced multimodal language models performed near-randomly or at 0% accuracy.

The ability to process information from multiple modalities and to reason through it step-by-step remains a critical challenge in advancing artificial intelligence. However, existing reasoning benchmarks focus on text-only reasoning, or employ multimodal questions that can be answered by directly retrieving information from a non-text modality. Thus, complex reasoning remains poorly understood in multimodal domains. Here, we present MARBLE, a challenging multimodal reasoning benchmark that is designed to scrutinize multimodal language models (MLLMs) in their ability to carefully reason step-by-step through complex multimodal problems and environments. MARBLE is composed of two highly challenging tasks, M-Portal and M-Cube, that require the crafting and understanding of multistep plans under spatial, visual, and physical constraints. We find that current MLLMs perform poorly on MARBLE -- all the 12 advanced models obtain near-random performance on M-Portal and 0% accuracy on M-Cube. Only in simplified subtasks some models outperform the random baseline, indicating that complex reasoning is still a challenge for existing MLLMs. Moreover, we show that perception remains a bottleneck, where MLLMs occasionally fail to extract information from the visual inputs. By shedding a light on the limitations of MLLMs, we hope that MARBLE will spur the development of the next generation of models with the ability to reason and plan across many, multimodal reasoning steps.

Foundations

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