TY - GEN
T1 - Characterization of a machine vision system to assess gestating sow space usage
AU - Leonard, Suzanne
AU - Xin, Hongwei
AU - Brown-Brandl, Tami M.
AU - Ramirez, Brett C.
AU - Stinn, John P.
AU - Johnson, Anna
AU - Liu, Kai
N1 - Research Unit(s) information for this publication is provided by the author(s) concerned.
PY - 2019/7
Y1 - 2019/7
N2 - Physical space allocation for animals is an important consideration when designing animal production facilities. This physical space is defined by the length, width, and height of a volume designated to an individual animal. Animals require static space when stationary, but additional space is needed to perform dynamic postural transitions. Inadequate space to perform basic behaviors and postural adjustments can reduce productivity and welfare. Conversely, excess space introduces inefficiencies, resulting in production losses and unnecessary construction expenses. The most commonly used sow space guidelines were published in the 1980s. Therefore, modern commercial sow's static and dynamic space requirements must be studied to provide evidence-based guidelines for current producers. Such information can be accurately assessed with the use of time-of-flight depth image sensors. A process to develop calibration equations to convert the depth image pixel measurements into physical dimensions was developed and error was assessed. Sample data collected on structurally sound commercial sows (Landrace × Yorkshire) in late gestation (11-15 weeks) of various parities is described. Length, width, and height of the space utilized by sows were calculated for static positions defined as standing and lateral lying, as well as dynamic sequences defined as standing up and lying down. Results can be used to develop relationships between sow body weight and three dimensional static and dynamic space requirements. This information can be used to inform gestation housing design decisions.
AB - Physical space allocation for animals is an important consideration when designing animal production facilities. This physical space is defined by the length, width, and height of a volume designated to an individual animal. Animals require static space when stationary, but additional space is needed to perform dynamic postural transitions. Inadequate space to perform basic behaviors and postural adjustments can reduce productivity and welfare. Conversely, excess space introduces inefficiencies, resulting in production losses and unnecessary construction expenses. The most commonly used sow space guidelines were published in the 1980s. Therefore, modern commercial sow's static and dynamic space requirements must be studied to provide evidence-based guidelines for current producers. Such information can be accurately assessed with the use of time-of-flight depth image sensors. A process to develop calibration equations to convert the depth image pixel measurements into physical dimensions was developed and error was assessed. Sample data collected on structurally sound commercial sows (Landrace × Yorkshire) in late gestation (11-15 weeks) of various parities is described. Length, width, and height of the space utilized by sows were calculated for static positions defined as standing and lateral lying, as well as dynamic sequences defined as standing up and lying down. Results can be used to develop relationships between sow body weight and three dimensional static and dynamic space requirements. This information can be used to inform gestation housing design decisions.
KW - Kinect®
KW - Machine vision
KW - Sow
KW - Space allocation
KW - Welfare
UR - http://www.scopus.com/inward/record.url?scp=85084011808&partnerID=8YFLogxK
UR - https://www.scopus.com/record/pubmetrics.uri?eid=2-s2.0-85084011808&origin=recordpage
U2 - 10.13031/aim.201900782
DO - 10.13031/aim.201900782
M3 - RGC 32 - Refereed conference paper (with host publication)
T3 - ASABE Annual International Meeting
BT - ASABE 2019 Annual International Meeting
PB - American Society of Agricultural and Biological Engineers
T2 - 2019 ASABE Annual International Meeting
Y2 - 7 July 2019 through 10 July 2019
ER -