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Autori principali: Zelch, Christoph, Peters, Jan, von Stryk, Oskar
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2404.17269
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author Zelch, Christoph
Peters, Jan
von Stryk, Oskar
author_facet Zelch, Christoph
Peters, Jan
von Stryk, Oskar
contents Clustering of motion trajectories is highly relevant for human-robot interactions as it allows the anticipation of human motions, fast reaction to those, as well as the recognition of explicit gestures. Further, it allows automated analysis of recorded motion data. Many clustering algorithms for trajectories build upon distance metrics that are based on pointwise Euclidean distances. However, our work indicates that focusing on salient characteristics is often sufficient. We present a novel distance measure for motion plans consisting of state and control trajectories that is based on a compressed representation built from their main features. This approach allows a flexible choice of feature classes relevant to the respective task. The distance measure is used in agglomerative hierarchical clustering. We compare our method with the widely used dynamic time warping algorithm on test sets of motion plans for the Furuta pendulum and the Manutec robot arm and on real-world data from a human motion dataset. The proposed method demonstrates slight advantages in clustering and strong advantages in runtime, especially for long trajectories.
format Preprint
id arxiv_https___arxiv_org_abs_2404_17269
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Clustering of Motion Trajectories by a Distance Measure Based on Semantic Features
Zelch, Christoph
Peters, Jan
von Stryk, Oskar
Robotics
Clustering of motion trajectories is highly relevant for human-robot interactions as it allows the anticipation of human motions, fast reaction to those, as well as the recognition of explicit gestures. Further, it allows automated analysis of recorded motion data. Many clustering algorithms for trajectories build upon distance metrics that are based on pointwise Euclidean distances. However, our work indicates that focusing on salient characteristics is often sufficient. We present a novel distance measure for motion plans consisting of state and control trajectories that is based on a compressed representation built from their main features. This approach allows a flexible choice of feature classes relevant to the respective task. The distance measure is used in agglomerative hierarchical clustering. We compare our method with the widely used dynamic time warping algorithm on test sets of motion plans for the Furuta pendulum and the Manutec robot arm and on real-world data from a human motion dataset. The proposed method demonstrates slight advantages in clustering and strong advantages in runtime, especially for long trajectories.
title Clustering of Motion Trajectories by a Distance Measure Based on Semantic Features
topic Robotics
url https://arxiv.org/abs/2404.17269