Control Without Control: Defining Implicit Interaction Paradigms for Autonomous Assistive Robots

arXiv cs.RO / 3/31/2026

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Key Points

  • The paper addresses a key challenge in autonomous assistive robotics: maintaining users’ sense of control while automating caregiving tasks.
  • It proposes and explores an interaction paradigm called “implicit control,” where robot behavior adapts to users’ natural behavioral cues rather than relying on explicit/direct inputs.
  • Using two prior systems as design cases, the study focuses on user perceptions of the interaction and reports findings from new thematic analysis of qualitative feedback.
  • The results indicate that well-designed implicit control can lower perceived workload while preserving users’ control via intuitiveness, responsiveness, contextual awareness, and adaptability to preferences.
  • The authors also distill core design guidelines to help determine when and how to apply implicit interaction paradigms in assistive applications.

Abstract

Assistive robotic systems have shown growing potential to improve the quality of life of those with disabilities. As researchers explore the automation of various caregiving tasks, considerations for how the technology can still preserve the user's sense of control become paramount to ensuring that robotic systems are aligned with fundamental user needs and motivations. In this work, we present two previously developed systems as design cases through which to explore an interaction paradigm that we call implicit control, where the behavior of an autonomous robot is modified based on users' natural behavioral cues, instead of some direct input. Our selected design cases, unlike systems in past work, specifically probe users' perception of the interaction. We find, from a new thematic analysis of qualitative feedback on both cases, that designing for effective implicit control enables both a reduction in perceived workload and the preservation of the users' sense of control through the system's intuitiveness and responsiveness, contextual awareness, and ability to adapt to preferences. We further derive a set of core guidelines for designers in deciding when and how to apply implicit interaction paradigms for their assistive applications.