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Main Authors: Zhou, Xueyang, Wang, Zijia, Li, Qianjiang, Hu, Yibo, Tie, Guiyao, Wan, Li, Liu, Yidan, Zhou, Pan, Sun, Lichao, Chen, Yongchao
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.26637
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author Zhou, Xueyang
Wang, Zijia
Li, Qianjiang
Hu, Yibo
Tie, Guiyao
Wan, Li
Liu, Yidan
Zhou, Pan
Sun, Lichao
Chen, Yongchao
author_facet Zhou, Xueyang
Wang, Zijia
Li, Qianjiang
Hu, Yibo
Tie, Guiyao
Wan, Li
Liu, Yidan
Zhou, Pan
Sun, Lichao
Chen, Yongchao
contents Most existing embodied intelligence methods formulate perception, reasoning, planning, and control within a unified parameterized policy. Yet these capabilities are inherently hierarchical and heterogeneous, making them difficult to reliably learn and modularize within a single model. We propose a capability externalization approach that decouples heterogeneous capabilities into independently optimized tools, dynamically invoked at inference time. To this end, we introduce Embodied Tool Protocol (ETP), a standardized protocol for embodied tool registration, discovery, invocation, and execution, and curate 100+ validated tools spanning perception, cognition, reasoning, and execution as the tool base. Building on this, we construct EmbodiedToolBench to evaluate both whether tool augmentation improves embodied performance and how well current models use tools across tool-necessity recognition, tool selection, tool execution, and tool-chain composition. Experiments across simulation and real-world platforms confirm that capability externalization consistently improves embodied performance (avg. gain 31% on EB-ALFRED and 36% on EB-Navigation), yet reveal a clear boundary: gains are substantial for cognition and perception but are limited for execution-type capabilities. Moreover, our analysis reveals that knowing when, which, and how to invoke tools remains a persistent challenge across all models, thereby highlighting embodied tool competence as a critical direction for future research.
format Preprint
id arxiv_https___arxiv_org_abs_2605_26637
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Enabling Extensible Embodied Capabilities with Tools
Zhou, Xueyang
Wang, Zijia
Li, Qianjiang
Hu, Yibo
Tie, Guiyao
Wan, Li
Liu, Yidan
Zhou, Pan
Sun, Lichao
Chen, Yongchao
Robotics
I.2
Most existing embodied intelligence methods formulate perception, reasoning, planning, and control within a unified parameterized policy. Yet these capabilities are inherently hierarchical and heterogeneous, making them difficult to reliably learn and modularize within a single model. We propose a capability externalization approach that decouples heterogeneous capabilities into independently optimized tools, dynamically invoked at inference time. To this end, we introduce Embodied Tool Protocol (ETP), a standardized protocol for embodied tool registration, discovery, invocation, and execution, and curate 100+ validated tools spanning perception, cognition, reasoning, and execution as the tool base. Building on this, we construct EmbodiedToolBench to evaluate both whether tool augmentation improves embodied performance and how well current models use tools across tool-necessity recognition, tool selection, tool execution, and tool-chain composition. Experiments across simulation and real-world platforms confirm that capability externalization consistently improves embodied performance (avg. gain 31% on EB-ALFRED and 36% on EB-Navigation), yet reveal a clear boundary: gains are substantial for cognition and perception but are limited for execution-type capabilities. Moreover, our analysis reveals that knowing when, which, and how to invoke tools remains a persistent challenge across all models, thereby highlighting embodied tool competence as a critical direction for future research.
title Enabling Extensible Embodied Capabilities with Tools
topic Robotics
I.2
url https://arxiv.org/abs/2605.26637