Facial Region Analysis for Individual Identification of Cows and Feeding Time Estimation

Author:

Kawagoe Yusei1,Kobayashi Ikuo2,Zin Thi Thi1ORCID

Affiliation:

1. Graduate School of Engineering, University of Miyazaki, Miyazaki 889-2192, Japan

2. Field Science Center, Faculty of Agriculture, University of Miyazaki, Miyazaki 889-2192, Japan

Abstract

With the increasing number of cows per farmer in Japan, an automatic cow monitoring system is being introduced. One important aspect of such a system is the ability to identify individual cows and estimate their feeding time. In this study, we propose a method for achieving this goal through facial region analysis. We used a YOLO detector to extract the cow head region from video images captured during feeding with the head region cropped as a face region image. The face region image was used for cow identification and transfer learning was employed for identification. In the context of cow identification, transfer learning can be used to train a pre-existing deep neural network to recognize individual cows based on their unique physical characteristics, such as their head shape, markings, or ear tags. To estimate the time of feeding, we divided the feeding area into vertical strips for each cow and established a horizontal line just above the feeding materials to determine whether a cow was feeding or not by using Hough transform techniques. We tested our method using real-life data from a large farm, and the experimental results showed promise in achieving our objectives. This approach has the potential to diagnose diseases and movement disorders in cows and could provide valuable insights for farmers.

Funder

KEIRIN RACE

Publisher

MDPI AG

Subject

Plant Science,Agronomy and Crop Science,Food Science

Reference25 articles.

1. (2023, February 15). Ministry of Agriculture, Forestry and Fisheries, Livestock Statistics Survey, Livestock Statistics, Dairy Cattle, and Beef Cattle, Number of Houses and Number of Cattle. Available online: https://www.maff.go.jp/j/tokei/kouhyou/tikusan/.

2. (2023, February 15). Present Situation of Japanese Dairy Farming (National Survey). Available online: https://www.dairy.co.jp/news/kulbvq000000mybw-img/kulbvq000000myd8.pdf.

3. Zin, T.T., Misawa, S., Pwint, M.Z., Thant, S., Seint, P.T., Sumi, K., and Yoshida, K. (2020, January 10–12). Cow Identification System using Ear Tag Recognition. Proceedings of the 2020 IEEE 2nd Global Conference on Life Sciences and Technologies (LifeTech), Kyoto, Japan.

4. Changes in Feeding Behavior as Possible Indicators for the Automatic Monitoring of Health Disorders in Dairy Cows;Tolkamp;J. Dairy Sci.,2008

5. Observations on the changes in behavioral activities of dairy cows prior to and after parturition;Bao;Ir. Vet. J.,1991

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