ROLGApr 22, 2025

SPECI: Skill Prompts based Hierarchical Continual Imitation Learning for Robot Manipulation

arXiv:2504.15561v16 citationsh-index: 2IEEE Trans Cogn Dev Syst
Originality Incremental advance
AI Analysis

This work addresses the challenge of dynamic adaptation for robots in unstructured environments, though it appears incremental as it builds on existing continual imitation learning approaches.

The paper tackles the problem of lifelong adaptability in robot manipulation by proposing SPECI, a hierarchical continual imitation learning framework that enables efficient cross-task knowledge transfer, achieving superior performance over state-of-the-art methods across diverse manipulation tasks.

Real-world robot manipulation in dynamic unstructured environments requires lifelong adaptability to evolving objects, scenes and tasks. Traditional imitation learning relies on static training paradigms, which are ill-suited for lifelong adaptation. Although Continual Imitation Learnin (CIL) enables incremental task adaptation while preserving learned knowledge, current CIL methods primarily overlook the intrinsic skill characteristics of robot manipulation or depend on manually defined and rigid skills, leading to suboptimal cross-task knowledge transfer. To address these issues, we propose Skill Prompts-based HiErarchical Continual Imitation Learning (SPECI), a novel end-to-end hierarchical CIL policy architecture for robot manipulation. The SPECI framework consists of a multimodal perception and fusion module for heterogeneous sensory information encoding, a high-level skill inference module for dynamic skill extraction and selection, and a low-level action execution module for precise action generation. To enable efficient knowledge transfer on both skill and task levels, SPECI performs continual implicit skill acquisition and reuse via an expandable skill codebook and an attention-driven skill selection mechanism. Furthermore, we introduce mode approximation to augment the last two modules with task-specific and task-sharing parameters, thereby enhancing task-level knowledge transfer. Extensive experiments on diverse manipulation task suites demonstrate that SPECI consistently outperforms state-of-the-art CIL methods across all evaluated metrics, revealing exceptional bidirectional knowledge transfer and superior overall performance.

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