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Safe Embodied AI for Long-horizon Tasks: A Cross-layer Analysis of Robotic Manipulation

Dabin Kim, Daemin Park, Sangyub Lee, Jinsik Kim, Yeongtak Oh, Jongho Shin, Sungroh Yoon

Published Jun 6, 2026
Editorial review6.8
Relevance0.514
Freshness0.000

Why It Matters

What makes this one worth your time

Understanding safety in robotic manipulation is crucial for deploying AI systems in real-world environments where failures can have significant consequences.

A structured review of safety in long-horizon robotic manipulation, highlighting gaps and future research directions.

Summary

The paper surveys safety in long-horizon robotic manipulation from an embodied AI perspective, organizing the literature by intervention locus and analyzing the strength of evidence for various safety approaches.

Key contributions

  • Provides a structured review of safety in long-horizon robotic manipulation.
  • Organizes literature by intervention locus: planning-time, policy-time, and execution-time safety.
  • Identifies gaps and outlines future research directions for safer deployment.

Notable insights

  • The paper identifies persistent gaps in policy-time safety and formal support for contact-rich manipulation.
  • It highlights the need for manipulation-specific safety benchmarks.

Possible limitations

  • Not stated in the abstract

Abstract

arXiv:2606.05660v1 Announce Type: cross Abstract: Embodied AI systems are increasingly expected to reason and act over extended horizons in physical environments. This growing capability brings safety to the foreground, because failures in the physical world can harm people, damage objects, and disrupt workplaces. Although safe embodied AI has attracted substantial attention, the literature remains fragmented across planning, policy design, and runtime execution. Long-horizon robotic manipulation is a particularly revealing anchor domain for this problem because semantic misgrounding, subtask-level error propagation, execution drift, and contact-rich physical risk can accumulate within the same closed-loop system. This survey therefore provides a structured review of safety in long-horizon robotic manipulation from an embodied AI perspective. We organize the literature by intervention locus, covering planning-time, policy-time, and execution-time safety, and we analyze the strength of the evidence that each line of work provides, distinguishing formal guarantees, statistical support, and empirical safety heuristics. This framework clarifies the distinct roles of backbone capability papers, direct safety mechanisms, and benchmark or evaluation studies, while exposing where current safety claims are well supported and where they remain indirect. We identify persistent gaps, including limited evidence for policy-time safety, weak formal support for contact-rich long-horizon manipulation, immature uncertainty-triggered intervention, and a shortage of manipulation-specific safety benchmarks. We conclude by outlining research directions for cross-layer assurance, evaluation design, and safer deployment of long-horizon robotic agents in real-world settings.