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Bibliographic Details
Main Authors: Wang, Alexander, Donahue, Chris, Jain, Dhruv
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.17112
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author Wang, Alexander
Donahue, Chris
Jain, Dhruv
author_facet Wang, Alexander
Donahue, Chris
Jain, Dhruv
contents We propose a system to adapt a user's music to their exercise by aligning high-energy music segments with intense intervals of the workout. Listening to music during exercise can boost motivation and performance. However, the structure of the music may be different from the user's natural phases of rest and work, causing users to rest longer than needed while waiting for a motivational section, or lose motivation mid-work if the section ends too soon. To address this, our system, called RISE, automatically estimates the intense segments in music and uses component-based music rearrangement techniques to dynamically extend and shorten different segments of the user's song to fit the ongoing exercise routine. Our system takes as input the rest and work durations to guide adaptation. Currently, this is determined either via a pre-defined plan or manual input during the workout. We evaluated RISE with 12 participants and compared our system to a non-adaptive music baseline while exercising in our lab. Participants found our rearrangements keeps intensity estimation accurate, and many recalled moments when intensity alignment helped them push through their workout.
format Preprint
id arxiv_https___arxiv_org_abs_2509_17112
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle RISE: Adaptive music playback for Realtime Intensity Synchronization with Exercise
Wang, Alexander
Donahue, Chris
Jain, Dhruv
Sound
We propose a system to adapt a user's music to their exercise by aligning high-energy music segments with intense intervals of the workout. Listening to music during exercise can boost motivation and performance. However, the structure of the music may be different from the user's natural phases of rest and work, causing users to rest longer than needed while waiting for a motivational section, or lose motivation mid-work if the section ends too soon. To address this, our system, called RISE, automatically estimates the intense segments in music and uses component-based music rearrangement techniques to dynamically extend and shorten different segments of the user's song to fit the ongoing exercise routine. Our system takes as input the rest and work durations to guide adaptation. Currently, this is determined either via a pre-defined plan or manual input during the workout. We evaluated RISE with 12 participants and compared our system to a non-adaptive music baseline while exercising in our lab. Participants found our rearrangements keeps intensity estimation accurate, and many recalled moments when intensity alignment helped them push through their workout.
title RISE: Adaptive music playback for Realtime Intensity Synchronization with Exercise
topic Sound
url https://arxiv.org/abs/2509.17112