The use of kinematics to quantify gait attributes and predict gait scores in dairy cows
Celia Julliot, Gabriel M. Dallago, Amir Nejati, Abdoulaye B. Diallo, Elsa Vasseur

TL;DR
This study developed machine learning models using 3D gait kinematic data to predict dairy cow gait scores, aiming for early detection of lameness and improved animal welfare.
Contribution
It introduces a novel approach combining 3D kinematic gait attributes with machine learning for automated gait score prediction in dairy cows.
Findings
GBM model achieved 0.65 accuracy and F1 score
Kinematic data effectively predicted gait abnormalities
Automated system can aid early lameness detection
Abstract
Detecting walking pattern abnormalities in dairy cows early on holds the potential to reduce the occurrence of clinical lameness. This study aimed to predict gait scores in non-clinically lame dairy cows by using gait attributes based on kinematic data. Markers were placed on 20 anatomical landmarks on 12 dairy cows. The cows were walked multiple times through a corridor while recorded by six cameras, representing 69 passages. Specific gait attributes were computed from the 3D coordinates of the hoof markers. Gait was visually assessed using a 5-point numerical rating system (NRS). Due to the limited number of observations with NRS lower than 2 (n = 1) and higher than 3 (n = 6), the NRS labels were combined into three groups, representing NRS <= 2, NRS = 2.5, and NRS >= 3. The dataset was split into training and testing sets (70:30 ratio), stratified by the distribution of the NRS…
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Taxonomy
TopicsAnimal Behavior and Welfare Studies · Agriculture and Farm Safety · Veterinary Orthopedics and Neurology
