Saved in:
Bibliographic Details
Main Authors: Biagi, Federico, Onfiani, Dario, Silenzi, Simone, Iani, Cristina, Biagiotti, Luigi
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.22378
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910162463227904
author Biagi, Federico
Onfiani, Dario
Silenzi, Simone
Iani, Cristina
Biagiotti, Luigi
author_facet Biagi, Federico
Onfiani, Dario
Silenzi, Simone
Iani, Cristina
Biagiotti, Luigi
contents Robot-to-human handovers often rely on static, open-loop strategies (or, at best, approaches that adapt only the position), which generally do not consider how the object will be grasped by the human, thus requiring the user to adapt. This work presents a novel adaptive framework that dynamically adjusts the object's delivery pose in real time based on the user's hand pose and the intended downstream task. By integrating AI-based hand pose estimation with smooth, kinematically constrained trajectories, the system ensures a safe approach and an optimal handover orientation. A comprehensive user study compares the proposed adaptive approach against a static baseline across multiple tasks, evaluating both subjective metrics (NASA-TLX, Human-Robot Trust Scale) and objective physiological data (blink rate measured via wearable eye-trackers). The results demonstrate that dynamic alignment significantly reduces users' cognitive workload and physiological stress, while increasing perceived trust in the robot's reliability. These findings highlight the potential of task- and pose-aware systems for enabling fluid and ergonomic human-robot collaboration.
format Preprint
id arxiv_https___arxiv_org_abs_2604_22378
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Adaptive vs. Static Robot-to-Human Handover: A Study on Orientation and Approach Direction
Biagi, Federico
Onfiani, Dario
Silenzi, Simone
Iani, Cristina
Biagiotti, Luigi
Robotics
Robot-to-human handovers often rely on static, open-loop strategies (or, at best, approaches that adapt only the position), which generally do not consider how the object will be grasped by the human, thus requiring the user to adapt. This work presents a novel adaptive framework that dynamically adjusts the object's delivery pose in real time based on the user's hand pose and the intended downstream task. By integrating AI-based hand pose estimation with smooth, kinematically constrained trajectories, the system ensures a safe approach and an optimal handover orientation. A comprehensive user study compares the proposed adaptive approach against a static baseline across multiple tasks, evaluating both subjective metrics (NASA-TLX, Human-Robot Trust Scale) and objective physiological data (blink rate measured via wearable eye-trackers). The results demonstrate that dynamic alignment significantly reduces users' cognitive workload and physiological stress, while increasing perceived trust in the robot's reliability. These findings highlight the potential of task- and pose-aware systems for enabling fluid and ergonomic human-robot collaboration.
title Adaptive vs. Static Robot-to-Human Handover: A Study on Orientation and Approach Direction
topic Robotics
url https://arxiv.org/abs/2604.22378