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Individual Identification of Dairy Cows Based on Deep Feature Extrac-tion and Matching

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摘要 Individual identification of dairy cows is the prerequisite for automatic analysis and intelligent perception of dairy cows'behavior.At present,individual identification of dairy cows based on deep convolutional neural network had the disadvantages in prolonged training at the additions of new cows samples.Therefore,a cow individual identification framework was proposed based on deep feature extraction and matching,and the individual identification of dairy cows based on this framework could avoid repeated training.Firstly,the trained convolutional neural network model was used as the feature extractor;secondly,the feature extraction was used to extract features and stored the features into the template feature library to complete the enrollment;finally,the identifies of dairy cows were identified.Based on this framework,when new cows joined the herd,enrollment could be completed quickly.In order to evaluate the application performance of this method in closed-set and open-set individual identification of dairy cows,back images of 524 cows were collected,among which the back images of 150 cows were selected as the training data to train feature extractor.The data of the remaining 374 cows were used to generate the template data set and the data to be identified.The experiment results showed that in the closed-set individual identification of dairy cows,the highest identification accuracy of top-1 was 99.73%,the highest identification accuracy from top-2 to top-5 was 100%,and the identification time of a single cow was 0.601 s,this method was verified to be effective.In the open-set individual identification of dairy cows,the recall was 90.38%,and the accuracy was 89.46%.When false accept rate(FAR)=0.05,true accept rate(TAR)=84.07%,this method was verified that the application had certain research value in open-set individual identification of dairy cows,which provided a certain idea for the application of individual identification in the field of intelligent animal husbandry.
出处 《Journal of Northeast Agricultural University(English Edition)》 CAS 2022年第3期85-96,共12页 东北农业大学学报(英文版)
基金 Supported by the National Key Research and Development Program of China(2019YFE0125600) China Agriculture Research System(CARS-36)。
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  • 1熊本海,钱平,罗清尧,吕健强.基于奶牛个体体况的精细饲养方案的设计与实现[J].农业工程学报,2005,21(10):118-123. 被引量:48
  • 2薛弘晔,李言俊,张科.加权Hausdorff距离蚁群算法寻优的红外图像匹配[J].红外技术,2007,29(12):708-711. 被引量:3
  • 3Viazzi S, Bahr C, Schlageter-Tello A, et al. Analysis of individual classification of lameness using automatic measurement of back posture in dairy cattle[J]. Journal of Dairy Science, 2013, 96(1): 257-266.
  • 4Porto S, Arcidiacono C, Anguzza U, et al. A computer vision-based system for the automatic detection of lying behaviour of dairy cows in free-stall barns[J]. Biosystems Engineering, 2013, 115(2): 184-194.
  • 5Viazzi S, Bahr C, Van Hertem T, et al. Comparison of a three-dimensional and two-dimensional camera system for automated measurement of back posture in dairy cows[J]. Computers and Electronics in Agriculture, 2014, 100(1): 139-147.
  • 6Yajuvendra S, Lathwal S S, Rajput N, et al. Effective and accurate discrimination of individual dairy cattle through acoustic sensing[J]. Applied Animal Behaviour Science, 2013, 146(1-4): 11-18.
  • 7Hoffmann G, Schmidt M, Ammon C, et al. Monitoring the body temperature of cows and calves using video recordings from an infrared thermography camera[J]. Veterinary Research Communications, 2013, 37(2): 91-99.
  • 8Chapinal N, Tucker C B. Validation of an automated method to count steps while cows stand on a weighing platform and its application as a measure to detect lameness[J]. Journal of Dairy Science, 2012, 95(11): 6523-6528.
  • 9Xia M, Cai C. Cattle face recognition using sparse representation classifier[J]. ICIC Express Letters, Part B: Applications, 2012, 3(6): 1499-1505.
  • 10Kim H T, Choi H L, Lee D W, et al. Recognition of individual Holstein cattle by imaging body patterns[J]. Asian-Australasian Journal of Animal Sciences, 2005, 18(8): 1194-1198.

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