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Main Authors: Wei, Shuang, Zhang, Muhua, Gan, Yun, Huang, Deqing, Ma, Lei, Yang, Chenguang
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.17014
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author Wei, Shuang
Zhang, Muhua
Gan, Yun
Huang, Deqing
Ma, Lei
Yang, Chenguang
author_facet Wei, Shuang
Zhang, Muhua
Gan, Yun
Huang, Deqing
Ma, Lei
Yang, Chenguang
contents Nowadays, robots are increasingly operated in environments shared with humans, where conflicts between human and robot behaviors may compromise safety. This paper presents a proactive behavioral conflict avoidance framework based on the principle of adaptation to trends for quadruped robots that not only ensures the robot's safety but also minimizes interference with human activities. It can proactively avoid potential conflicts with approaching humans or other dynamic objects, whether the robot is stationary or in motion, then swiftly resume its tasks once the conflict subsides. An enhanced approach is proposed to achieve precise human detection and tracking on vibratory robot platform equipped with low-cost hybrid solid-state LiDAR. When potential conflict detected, the robot selects an avoidance point and executes an evasion maneuver before resuming its task. This approach contrasts with conventional methods that remain goal-driven, often resulting in aggressive behaviors, such as forcibly bypassing obstacles and causing conflicts or becoming stuck in deadlock scenarios. The selection of avoidance points is achieved by integrating static and dynamic obstacle to generate a potential field map. The robot then searches for feasible regions within this map and determines the optimal avoidance point using an evaluation function. Experimental results demonstrate that the framework significantly reduces interference with human activities, enhances the safety of both robots and persons.
format Preprint
id arxiv_https___arxiv_org_abs_2503_17014
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Behavioral Conflict Avoidance Between Humans and Quadruped Robots in Shared Environments
Wei, Shuang
Zhang, Muhua
Gan, Yun
Huang, Deqing
Ma, Lei
Yang, Chenguang
Robotics
Nowadays, robots are increasingly operated in environments shared with humans, where conflicts between human and robot behaviors may compromise safety. This paper presents a proactive behavioral conflict avoidance framework based on the principle of adaptation to trends for quadruped robots that not only ensures the robot's safety but also minimizes interference with human activities. It can proactively avoid potential conflicts with approaching humans or other dynamic objects, whether the robot is stationary or in motion, then swiftly resume its tasks once the conflict subsides. An enhanced approach is proposed to achieve precise human detection and tracking on vibratory robot platform equipped with low-cost hybrid solid-state LiDAR. When potential conflict detected, the robot selects an avoidance point and executes an evasion maneuver before resuming its task. This approach contrasts with conventional methods that remain goal-driven, often resulting in aggressive behaviors, such as forcibly bypassing obstacles and causing conflicts or becoming stuck in deadlock scenarios. The selection of avoidance points is achieved by integrating static and dynamic obstacle to generate a potential field map. The robot then searches for feasible regions within this map and determines the optimal avoidance point using an evaluation function. Experimental results demonstrate that the framework significantly reduces interference with human activities, enhances the safety of both robots and persons.
title Behavioral Conflict Avoidance Between Humans and Quadruped Robots in Shared Environments
topic Robotics
url https://arxiv.org/abs/2503.17014