TY - JOUR
T1 - Analysis of individual classification of lameness using automatic measurement of back posture in dairy cattle
AU - Viazzi, S.
AU - Bahr, C.
AU - Schlageter-Tello, A.
AU - Van Hertem, T.
AU - Romanini, C. E.B.
AU - Pluk, A.
AU - Halachmi, I.
AU - Lokhorst, C.
AU - Berckmans, D.
N1 - Funding Information:
The authors thank farm personnel from Kibbutz Yifat (Israel) for their cooperation in the project. Thanks are due to Aaron Antler (Agricultural Research Organization, Bet Dagan, Israel) for building the experiment setup on the farm. The authors also thank Doron Bar, Dani Amram, and Roni Meyer from SCR Engineers Israel (Netanya) for their technical help. The work of Aaron Antler and that of SCR Engineers Israel were partly funded by the Israeli Agricultural Ministry Chief Scientist Fund (project numbers 459-4426-10; 459-4369-10; 459-4398-951). This study was part of the Marie Curie BioBusiness FP7-PEOPLE-ITN-2009-2014.
PY - 2013/1/1
Y1 - 2013/1/1
N2 - Currently, diagnosis of lameness at an early stage in dairy cows relies on visual observation by the farmer, which is time consuming and often omitted. Many studies have tried to develop automatic cow lameness detection systems. However, those studies apply thresholds to the whole population to detect whether or not an individual cow is lame. Therefore, the objective of this study was to develop and test an individualized version of the body movement pattern score, which uses back posture to classify lameness into 3 classes, and to compare both the population and the individual approach under farm conditions. In a data set of 223 videos from 90 cows, 76% of cows were correctly classified, with an 83% true positive rate and 22% false positive rate when using the population approach. A new data set, containing 105 videos of 8 cows that had moved through all 3 lameness classes, was used for an ANOVA on the 3 different classes, showing that body movement pattern scores differed significantly among cows. Moreover, the classification accuracy and the true positive rate increased by 10 percentage units up to 91%, and the false positive rate decreased by 4 percentage units down to 6% when based on an individual threshold compared with a population threshold.
AB - Currently, diagnosis of lameness at an early stage in dairy cows relies on visual observation by the farmer, which is time consuming and often omitted. Many studies have tried to develop automatic cow lameness detection systems. However, those studies apply thresholds to the whole population to detect whether or not an individual cow is lame. Therefore, the objective of this study was to develop and test an individualized version of the body movement pattern score, which uses back posture to classify lameness into 3 classes, and to compare both the population and the individual approach under farm conditions. In a data set of 223 videos from 90 cows, 76% of cows were correctly classified, with an 83% true positive rate and 22% false positive rate when using the population approach. A new data set, containing 105 videos of 8 cows that had moved through all 3 lameness classes, was used for an ANOVA on the 3 different classes, showing that body movement pattern scores differed significantly among cows. Moreover, the classification accuracy and the true positive rate increased by 10 percentage units up to 91%, and the false positive rate decreased by 4 percentage units down to 6% when based on an individual threshold compared with a population threshold.
KW - Back arch
KW - Dairy cattle
KW - Image processing
KW - Lameness detection
UR - http://www.scopus.com/inward/record.url?scp=84871607748&partnerID=8YFLogxK
U2 - 10.3168/jds.2012-5806
DO - 10.3168/jds.2012-5806
M3 - Article
C2 - 23164234
AN - SCOPUS:84871607748
SN - 0022-0302
VL - 96
SP - 257
EP - 266
JO - Journal of Dairy Science
JF - Journal of Dairy Science
IS - 1
ER -