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Main Authors: Palez, Netta, Straß, Léonie, Meller, Sebastian, Volk, Holger, Zamansky, Anna, Klein, Itzik
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.05671
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author Palez, Netta
Straß, Léonie
Meller, Sebastian
Volk, Holger
Zamansky, Anna
Klein, Itzik
author_facet Palez, Netta
Straß, Léonie
Meller, Sebastian
Volk, Holger
Zamansky, Anna
Klein, Itzik
contents Canine gait analysis using wearable inertial sensors is gaining attention in veterinary clinical settings, as it provides valuable insights into a range of mobility impairments. Neurological and orthopedic conditions cannot always be easily distinguished even by experienced clinicians. The current study explored and developed a deep learning approach using inertial sensor readings to assess whether neurological and orthopedic gait could facilitate gait analysis. Our investigation focused on optimizing both performance and generalizability in distinguishing between these gait abnormalities. Variations in sensor configurations, assessment protocols, and enhancements to deep learning model architectures were further suggested. Using a dataset of 29 dogs, our proposed approach achieved 96% accuracy in the multiclass classification task (healthy/orthopedic/neurological) and 82% accuracy in the binary classification task (healthy/non-healthy) when generalizing to unseen dogs. Our results demonstrate the potential of inertial-based deep learning models to serve as a practical and objective diagnostic and clinical aid to differentiate gait assessment in orthopedic and neurological conditions.
format Preprint
id arxiv_https___arxiv_org_abs_2507_05671
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Canine Clinical Gait Analysis for Orthopedic and Neurological Disorders: An Inertial Deep-Learning Approach
Palez, Netta
Straß, Léonie
Meller, Sebastian
Volk, Holger
Zamansky, Anna
Klein, Itzik
Machine Learning
Canine gait analysis using wearable inertial sensors is gaining attention in veterinary clinical settings, as it provides valuable insights into a range of mobility impairments. Neurological and orthopedic conditions cannot always be easily distinguished even by experienced clinicians. The current study explored and developed a deep learning approach using inertial sensor readings to assess whether neurological and orthopedic gait could facilitate gait analysis. Our investigation focused on optimizing both performance and generalizability in distinguishing between these gait abnormalities. Variations in sensor configurations, assessment protocols, and enhancements to deep learning model architectures were further suggested. Using a dataset of 29 dogs, our proposed approach achieved 96% accuracy in the multiclass classification task (healthy/orthopedic/neurological) and 82% accuracy in the binary classification task (healthy/non-healthy) when generalizing to unseen dogs. Our results demonstrate the potential of inertial-based deep learning models to serve as a practical and objective diagnostic and clinical aid to differentiate gait assessment in orthopedic and neurological conditions.
title Canine Clinical Gait Analysis for Orthopedic and Neurological Disorders: An Inertial Deep-Learning Approach
topic Machine Learning
url https://arxiv.org/abs/2507.05671