Towards Cognitive Collaborative Robots: Semantic-Level Integration and Explainable Control for Human-Centric Cooperation
Jaehong Oh

TL;DR
This review discusses advancements in semantic perception, cognitive planning, explainability, safety, and human intention recognition to enable more adaptive and trustworthy human-robot collaboration in industrial settings.
Contribution
It introduces a unified Cognitive Synergy Architecture that integrates key modules for enhanced human-centric robot collaboration.
Findings
Semantic mapping transforms spatial data into meaningful context.
Explainable reinforcement learning improves interpretability and trust.
Safety is enhanced through force-adaptive control and risk-aware planning.
Abstract
This is a preprint of a review article that has not yet undergone peer review. The content is intended for early dissemination and academic discussion. The final version may differ upon formal publication. As the Fourth Industrial Revolution reshapes industrial paradigms, human-robot collaboration (HRC) has transitioned from a desirable capability to an operational necessity. In response, collaborative robots (Cobots) are evolving beyond repetitive tasks toward adaptive, semantically informed interaction with humans and environments. This paper surveys five foundational pillars enabling this transformation: semantic-level perception, cognitive action planning, explainable learning and control, safety-aware motion design, and multimodal human intention recognition. We examine the role of semantic mapping in transforming spatial data into meaningful context, and explore cognitive planning…
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Taxonomy
TopicsSocial Robot Interaction and HRI · Robot Manipulation and Learning · Human-Automation Interaction and Safety
