Canoe Paddling Quality Assessment Using Smart Devices: Preliminary Machine Learning Study
S. Parab, A. Lamelas, A. Hassan, P. Bhote

TL;DR
This study explores using consumer smart devices combined with machine learning to assess and improve paddling technique, demonstrating promising preliminary results for accessible coaching solutions.
Contribution
It introduces a novel AI-based coaching system utilizing ML models and LLMs for stroke feedback, leveraging consumer devices for paddling assessment.
Findings
Highest ML model F score of 0.9496 with ERT
Sensor placement near wrists improves data quality
Feasibility shown for low-cost paddling assessment
Abstract
Over 22 million Americans participate in paddling-related activities annually, contributing to a global paddlesports market valued at 2.4 billion US dollars in 2020. Despite its popularity, the sport has seen limited integration of machine learning (ML) and remains hindered by the cost of coaching and specialized equipment. This study presents a novel AI-based coaching system that uses ML models trained on motion data and delivers stroke feedback via a large language model (LLM). Participants were recruited through a collaboration with the NYU Concrete Canoe Team. Motion data were collected across two sessions, one with suboptimal form and one with corrected technique, using Apple Watches and smartphones secured in sport straps. The data underwent stroke segmentation and feature extraction. ML models, including Support Vector Classifier, Random Forest, Gradient Boosting, and Extremely…
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Taxonomy
TopicsSports Performance and Training · Stroke Rehabilitation and Recovery · Cardiovascular and exercise physiology
