In animal farming, timely estrus detection and prediction of the best moment for insemination is crucial. Traditional sow estrus detection depends on the expertise of a farm attendant which can be inconsistent, time-consuming, and labor-intensive. Attempts and trials in developing and implementing technological tools to detect estrus have been explored by researchers. The objective of this review is to assess the automatic methods of estrus recognition in operation for sows and point out their strong and weak points to assist in developing new and improved detection systems. Real-time methods using body and vulvar temperature, posture recognition, and activity measurements show higher precision. Incorporating artificial intelligence with multiple estrus-related parameters is expected to enhance accuracy. Further development of new systems relies mostly upon the improved algorithm and accurate data provided. Future systems should be designed to minimize the misclassification rate, so better detection is achieved.
CITATION STYLE
Sharifuzzaman, M., Mun, H. S., Ampode, K. M. B., Lagua, E. B., Park, H. R., Kim, Y. H., … Yang, C. J. (2024, February 1). Technological Tools and Artificial Intelligence in Estrus Detection of Sows—A Comprehensive Review. Animals. Multidisciplinary Digital Publishing Institute (MDPI). https://doi.org/10.3390/ani14030471
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