Skip to main content

Research Repository

Advanced Search

Non-intrusive automated measurement of dairy cow body condition using 3D video

Hansen, Mark F; Smith, M; Smith, L; Hales, I

Non-intrusive automated measurement of dairy cow body condition using 3D video Thumbnail


Authors

Mark Hansen Mark.Hansen@uwe.ac.uk
Professor of Machine Vision and Machine Learning

M Smith

L Smith

I Hales



Abstract

Regular scoring of a dairy herd in terms of various physical metrics such as Body Condition Score (BCS), mobility and weight are essential for maintaining high animal welfare. This paper presents preliminary results of an automated system capable of nonintrusively measuring BCS automatically as the cow walks uninhibited beneath a 3D camera. The system uses a ’rolling ball’ algorithm on the depth map which simulates how well a ball of a set radius fits the surface. In this way a measure of angularity is generated which is shown to be inversely related to BCS on 95 cows. The measurements
are shown to be highly repeatable with 14 out of 15 cows being scored within one quarter BCS score repeatedly and seven of those being scored within an eighth of a BCS score.

Presentation Conference Type Presentation / Talk
Conference Name British Machine Vision Conference - Workshop of Machine Vision and Animal Behaviour
Start Date Sep 10, 2015
End Date Sep 10, 2015
Publication Date Jan 1, 2015
Publicly Available Date Jun 6, 2019
Peer Reviewed Peer Reviewed
Keywords dairy cows, 3D video, measurement, non-intrusive
Public URL https://uwe-repository.worktribe.com/output/842342
Additional Information Title of Conference or Conference Proceedings : British Machine Vision Conference - Workshop of Machine Vision and Animal Behaviour
Corporate Creators : Duncan Forbes

Files






You might also like



Downloadable Citations