References
- ALEXOAEI A.P., ROBU R.G., COJANU V., MIRON D., HOLOBIUC A.M., 2022 - Good practices in reforming the common agricultural policy to support the European Green Deal–a perspective on the consumption of pesticides and fertilizers. Amfiteatru Economic 24(60), 525-545.
- ASHTON K., 2009 - That ‘internet of things’ thing. RFID Journal 22(7), 97-114.
- BAIG T., ATHER D., SETIA S., QURAISHI S.J., MIAN S.M., 2023 - Towards advanced animal care: A Li-Fi and IoT-based system for monitoring newborn livestock. ES Materials & Manufacturing 23, 1038.
- BAINOMUGISHA E., WARIGO P.A., DAKA F.B., NSHIMYE A., BIRUNGI M., OKURE D., 2024 - AI-driven environmental sensor networks and digital platforms for urban air pollution monitoring and modelling. Societal Impacts 3, 100044.
- BAO J., XIE Q., 2022 - Artificial intelligence in animal farming: A systematic literature review. Journal of Cleaner Production 331, 129956.
- BERCKMANS D., 2014 - Precision livestock farming technologies for welfare management in intensive livestock systems. Review Science Technology 33(1), 189-196.
- BISHOP C.M., 2006 - Pattern recognition and machine learning. Springer. ISBN: 100387310738
- CHANGE C., 2016 - Agriculture and food security. The state of food and agriculture; FAO: Rome, Italy.
- CHIAVACCINI L., GUPTA A., CHIAVACCINI G., 2024 - From facial expressions to algorithms: A narrative review of animal pain recognition technologies. Frontiers in Veterinary Science 11, 1436795.
- CRUZ E., HIDALGO-RODRIGUEZ M., ACOSTA-REYES A.M., RANGEL J.C., BONICHE K., 2024 - AI-based monitoring for enhanced poultry flock management. Agriculture 14(12), 2187.
- DAWKINS M.S., 2021 - Does smart farming improve or damage animal welfare? Technology and what animals want. Frontiers in Animal Science 2, 736536.
- DUTTON W.H., 2014 - Putting things to work: Social and policy challenges for the internet of things. Info 16(3), 1-21.
- Eurostat, 2024 - Agricultural production - livestock and meat. https://ec.europa.eu/eurostat/statistics-explained/index.php?title=Agricultural_production_-_livestock_and_meat
- FANG C., ZHUANG X., ZHENG H., YANG J., ZHANG T., 2024 - The posture detection method of caged chickens based on computer vision. Animals 14(21), 3059.
- FAO, 2023 - Meat market review. Emerging trends and outlook 2023. https://openknowledge.fao.org/server/api/core/bitstreams/5fcbf357-eac5-4e22-84ce-ec0936d5fb52/content
- FODOR I., JACOBS M., ELLEN E.D., BOUWMAN A.C., DE KLERK B., VAN DER SLUIS M., 2023 - Computer vision derived pose features are associated with lameness in broilers. Proceedings XI European Symposium on Poultry Welfare (ESPW 2023), 49-49.
- GEHLOT A., MALIK P.K., SINGH R., AKRAM S.V., ALSUWIAN T., 2022 - Dairy 4.0: intelligent communication ecosystem for the cattle animal welfare with blockchain and IoT enabled technologies. Applied Sciences 12(14), 7316.
- GONZALEZ R.C., WOODS R.E., 2018 - Digital image processing. Pearson. ISBN: 9781292223049.
- GONZÁLEZ-SÁNCHEZ C., FRAILE J.C., PÉREZ-TURIEL J., DAMM E., SCHNEIDER J.G., ZIMMERMANN H., IHMIG F.R., 2016 - Capacitive sensing for non-invasive breathing and heart monitoring in non-restrained, non-sedated laboratory mice. Sensors 16(7), 1052.
- GOODFELLOW I., BENGIO Y., COURVILLE A., 2016 - Deep learning. MIT Press. ISBN: 9780262035613.
- GUBBI J., BUYYA R., MARUSIC S., PALANISWAMI M., 2013 - Internet of Things (IoT): A vision, architectural elements, and future directions. Future Generation Computer Systems 29(7), 1645-1660.
- GUO Y., QIAO Y., SUKKARIEH S., CHAI L., HE D., 2021 - BiGRU-attention based cow behavior classification using video data for precision livestock farming. Transactions of the ASABE 64(6), 1823-1833.
- HERLIN A., BRUNBERG E., HULTGREN J., HÖGBERG N., RYDBERG A., SKARIN A., 2021 -Animal welfare implications of digital tools for monitoring and management of cattle and sheep on pasture. Animals 11(3), 829.
- KIM J.Y., CHOE P.G., OH Y., OH K.J., KIM J., PARK S.J., OH M.D., 2020 - The first case of 2019 novel coronavirus pneumonia imported into Korea from Wuhan, China: Implication for infection prevention and control measures. Journal of Korean Medical Science 35(5).
- KOPLER I., MARCHAIM U., TIKÁSZ I.E., OPALIŃSKI S., KOKIN E., MALLINGER K., BANHAZI T., 2023 - Farmers’ perspectives of the benefits and risks in precision livestock farming in the EU pig and poultry sectors. Animals 13(18), 2868.
- LEE S., AHN H., SEO J., CHUNG Y., PARK D., PAN S., 2019 - Practical monitoring of undergrown pigs for IoT-based large-scale smart farm. IEEE Access 7, 173796-173810.
- LIU B., QIAN Y., WANG J., 2023 - EDDSN-MRT: multiple rodent tracking based on ear detection and dual Siamese network for rodent social behavior analysis. BMC Neuroscience 24(1), 23.
- MANKINS J.C., 1995 - Technology readiness levels: A white paper. NASA Office of Space Access and Technology.
- MARCHEWKA J., SZTANDARSKI P., ZDANOWSKA-SĄSIADEK Ż., DAMAZIAK K., WOJCIECHOWSKI F., RIBER A.B., GUNNARSSON S., 2020 - Associations between welfare and ranging profile in free-range commercial and heritage meat-purpose chickens (Gallus gallus domesticus). Poultry Science 99(9), 4141-4152.
- MARCHEWKA J., SZTANDARSKI P., SOLKA M., LOUTON H., RATH K., VOGT L., RAUCH E., RUIJTER D., DE JONG I.C., HORBAŃCZUK J.O., 2023 - Linking key husbandry factors to the intrinsic quality of broiler meat. Poultry Science 102(2), 102384.
- MCLENNAN K., MAHMOUD M., 2019 - Development of an automated pain facial expression detection system for sheep (Ovis aries). Animals 9(4), 196.
- MILOSEVIC B., CIRIC S., LALIC N., MILANOVIC V., SAVIC Z., OMERVIC I., ANDJUSIC L., 2019 - Machine learning application in growth and health prediction of broiler chickens. World’s Poultry Science Journal 75(3), 401-410.
- MITCHELL T.M., 1997 - Machine learning. McGraw-Hill. ISBN: 139780070428072.
- NOWACZEWSKI S., JANISZEWSKI S., KACZMAREK S., KACZOR N., RACEWICZ P., JAROSZ Ł., HEJDYSZ M., 2023 - Evaluation of the effectiveness of alternative methods for controlling coccidiosis in broiler chickens: A field trial. Animal Science Papers and Reports 41(2), 97-110.
- ROHAN A., RAFAQ M.S., HASAN M.J., ASGHAR F., BASHIR A.K., DOTTORINI T., 2024 -Application of deep learning for livestock behaviour recognition: A systematic literature review. Computers and Electronics in Agriculture 224, 109115.
- RUSSAKOVSKY O., DENG J., SU H., KRAUSE J., SATHEESH S., MA S., FEI-FEI L., 2015 -ImageNet large scale visual recognition challenge. International Journal of Computer Vision 115, 211-252.
- RUSSELL S.J., NORVIG P., 2016 - Artificial intelligence: A modern approach. Pearson. ISBN: 9781292401133
- SADEGHI M., BANAKAR A., MINAEI S., OROOJI M., SHOUSHTARI A., LI G., 2023 - Early detection of avian diseases based on thermography and artificial intelligence. Animals 13(14), 2348.
- SALGANIK M.J., 2019 - Bit by bit: Social research in the digital age. Princeton University Press. ISBN: 139780691158648
- SERLIKOWSKA A., 2024 - Animal welfare according to official controls in agri-food chain legislation. Administrative Law Review 6, 209-221.
- SHARMA R., BHUTE A.R., BASTIA B.K., 2022 - Application of artificial intelligence and machine learning technology for the prediction of postmortem interval: A systematic review of preclinical and clinical studies. Forensic Science International 340, 111473.
- SZELISKI R., 2022 - Computer vision: algorithms and applications. Springer Nature. ISBN: 139783030343743
- SZTANDARSKI P., MARCHEWKA J., WOJCIECHOWSKI F., RIBER A.B., GUNNARSSON S., HORBAŃCZUK J.O., 2021 - Associations between weather conditions and individual range use by commercial and heritage chickens. Poultry Science 100(8), 101265.
- WANG S., JIANG H., QIAO Y., JIANG S., LIN H., SUN Q., 2022 - The research progress of vision-based artificial intelligence in smart pig farming. Sensors 22(17), 6541.
- ZHANG L., GUO W., LV C., GUO M., YANG M., FU Q., LIU X., 2024 - Advancements in artificial intelligence technology for improving animal welfare: Current applications and research progress. Animal Research and One Health 2(1), 93-109.