BEAR: Benchmarking and Enhancing Multimodal Language Models for Atomic Embodied Capabilities
Abstract
BEAR is a comprehensive benchmark evaluating multimodal large language models' embodied capabilities, and BEAR-Agent enhances these models by integrating pretrained vision models, improving performance across various tasks.
Embodied capabilities refer to a suite of fundamental abilities for an agent to perceive, comprehend, and interact with the physical world. While multimodal large language models (MLLMs) show promise as embodied agents, a thorough and systematic evaluation of their embodied capabilities remains underexplored, as existing benchmarks primarily focus on specific domains such as planning or spatial understanding. To bridge this gap, we introduce BEAR, a comprehensive and fine-grained benchmark that evaluates MLLMs on atomic embodied capabilities. BEAR comprises 4,469 interleaved image-video-text entries across 14 domains in 6 categories, including tasks from low-level pointing, trajectory understanding, spatial reasoning, to high-level planning. Extensive evaluation results of 20 representative MLLMs reveal their persistent limitations across all domains of embodied capabilities. To tackle the shortfall, we propose BEAR-Agent, a multimodal conversable agent that integrates pretrained vision models to strengthen MLLM perception, 3D understanding, and planning capabilities. It substantially enhances MLLM performance across diverse embodied capabilities on BEAR, yielding a 9.12% absolute gain and a relative improvement of 17.5% on GPT-5. Furthermore, our experiments indicate that improving MLLM embodied capabilities can benefit embodied tasks in simulated environments. Project website: https://bear-official66.github.io/
Community
🔥Embodied agents need to perceive, reason and interact with its environment?
❓Would you like to know how your multimodal language model perform on embodied abilities? 🧠
We propose BEAR🐻!BEAR is the first mllm benchmark on atomic embodied capabilities! 🔥🔥🔥
It includes 14 skills across 6 categories, with 4,469 interleaved qa pairs!
🔍 Our results of 20 representative language models indicate the consistent limitations of mllm on embodied capabilities! We also provide detailed failure analysis in order for model improvements! 😈
To further improve the performance of language models on embodied capabilities, we propose BEAR-Agent🤖,a multimodal conversable agent 🪄✨🛸 to improve the model's zero-shot capabilities on BEAR!
We will release our code on Github page ⌛️⚽️, and we will update further results on it!🙏
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