This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Deniz, N. N., Chelotti, J. O., Galli b, J. R., Planisich b, A. M., Larripa b, M. J., Rufiner, H. L., and Giovanini, L. L.. 2017. Embedded system for real-time monitoring of foraging behavior of grazing cattle using acoustic signals. Elsevier, Computers and Electronics in Agriculture, 138 2017: 167–174.DenizN. N.ChelottiJ. O.Galli bJ. R.Planisich bA. M.Larripa bM. J.RufinerH. L., and GiovaniniL. L.2017Embedded system for real-time monitoring of foraging behavior of grazing cattle using acoustic signals138201716717410.1016/j.compag.2017.04.024Search in Google Scholar
Dinara, K.. 2016. Validation of rumiwatch nose-band sensors for measuring nutritional behavior of dairy cows. 2016 MSc Thesis, Green Biotechnology and Food Security, University of Eastern Finland, Faculty of Science and Forestry, Department of Environmental and Biological Sciences.DinaraK.2016Validation of rumiwatch nose-band sensors for measuring nutritional behavior of dairy cowsSearch in Google Scholar
Greenwood, P. L., Valencia, P., Overs, L., Paull, D. R., and Purvis, I. W.. 2014. New ways of measuring intake, efficiency and behaviour of grazing livestock. Animal Production Science 54: 1796-1804.GreenwoodP. L.ValenciaP.OversL.PaullD. R., and PurvisI. W.2014New ways of measuring intake, efficiency and behaviour of grazing livestock541796180410.1071/AN14409Search in Google Scholar
Greenwood, P. L., Paull, D. R., McNally, J., Kalinowski, T., Ebert, D., Little, B., Smith, D. V., Rahman, A., and Valencia, P.. 2017. Use of sensor determined behaviors to develop algorithm for pasture intake by individual grazing cattle. CSIRO publishing, Crop & Pasture Science.GreenwoodP. L.PaullD. R.McNallyJ.KalinowskiT.EbertD.LittleB.SmithD. V.RahmanA., and ValenciaP.2017Use of sensor determined behaviors to develop algorithm for pasture intake by individual grazing cattle10.1071/CP16383Search in Google Scholar
Imam, A., Chi, J., and Mozumdar, M.. 2015. Data compression and visualization for wireless sensor networks. International Journal on Smart Sensing and Intelligent Systems 8 4, December 2015.ImamA.ChiJ., and MozumdarM.2015Data compression and visualization for wireless sensor networks84December 201510.21307/ijssis-2017-844Search in Google Scholar
Kumar, A., and Hancke, G. P.. 2014. A zig-bee based animal health monitoring system. IEEE Sensors Journal, DOI: 10.1109/JSEN.2014.2349073.KumarA., and HanckeG. P.2014A zig-bee based animal health monitoring system10.1109/JSEN.2014.2349073Open DOISearch in Google Scholar
Lynch, E., Angeloni, L., Fristrup, K., Joyce, D., and Wittemyer, G.. 2013. The use of on animal acoustical recording devices for studying animal behavior. Ecology and Evolution. 3: 2030-2037.LynchE.AngeloniL.FristrupK.JoyceD., and WittemyerG.2013The use of on animal acoustical recording devices for studying animal behavior32030203710.1002/ece3.608372894423919149Search in Google Scholar
Navon, S., Mizrach, A., Hetzroni, A., and Ungar, E. D.. 2012. Automatic recognition of jaw movements in free-ranging cattle, goats and sheep, using acoustic monitoring. Biosystems Engineering 114: 474-483.NavonS.MizrachA.HetzroniA., and UngarE. D.2012Automatic recognition of jaw movements in free-ranging cattle, goats and sheep, using acoustic monitoring11447448310.1016/j.biosystemseng.2012.08.005Search in Google Scholar
Neethirajan, S.. 2016. Recent advances in wearable sensors for animal health management. Elsevier, Sensing and Bio-Sensing Research 12 2017: 15-29.NeethirajanS.2016Recent advances in wearable sensors for animal health management122017152910.1016/j.sbsr.2016.11.004Search in Google Scholar
Patii, A., Pawar, C., Patii, N., and Tambe, R.. 2015. Smart health monitoring system for animals. 2015 International Conference on Green Computing and Internet of Things (ICGCloT).PatiiA.PawarC.PatiiN., and TambeR.20152015 International Conference on Green Computing and Internet of Things (ICGCloT)10.1109/ICGCIoT.2015.7380715Search in Google Scholar
Tedın, R., Becerra, J. A., Duro, R. J., and Pena, F. L.. 2013. Computational intelligence based construction of a body condition assesment system for cattle. piscataway, NJ: IEEE.TedınR.BecerraJ. A.DuroR. J., and PenaF. L.2013Computational intelligence based construction of a body condition assesment system for cattle10.1109/CIVEMSA.2013.6617418Search in Google Scholar
Zehner, N., Hürlimann, M., Nydegger, F., and Schick, M.. 2014. Agroscope, institute for sustainability sciences, CH-8356 Ettenhausen, ‘Application of a chewing sensor (RumiWatch) for automatic heat detection in dairy cows: a pilot study’. International Conference of Agricultural Engineering, Zurich.ZehnerN.HürlimannM.NydeggerF., and SchickM.2014International Conference of Agricultural EngineeringZurichSearch in Google Scholar
Zhen, C. F., Wenyi, L. I. U., and Hanming, W. E. I.. 2015. The implementation of high efficiency wireless sensor in acoustic object tracking. International Journal on Smart Sensing and Intelligent Systems 8 4, December 2015.ZhenC. F.WenyiL. I. U., and HanmingW. E. I.2015The implementation of high efficiency wireless sensor in acoustic object tracking84December 201510.21307/ijssis-2017-840Search in Google Scholar