Special Issue: with invited papers from the 47th International Symposium „Actual tasks on Agricultural Engineering“ (ATAE), 5th – 7th March 2019, Opatija, Croatia, http://atae.agr.hr/, Editor: Prof. Andreas Gronauer
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 3.0 License.
Aggelopoulou, K.D., Wulfsohn, D., Fountas, S., Gemtos, T.A., Nanos, G.D. and S. Blackmore (2010): Spatial variation in yield and quality in a small apple orchard. Precision Agriculture 11, 538–556.AggelopoulouK.D.WulfsohnD.FountasS.GemtosT.A.NanosG.D.BlackmoreS.2010Spatial variation in yield and quality in a small apple orchard1153855610.1007/s11119-009-9146-9Search in Google Scholar
Albetis, J., Duthoit, S., Guttler F., Jacquin, A., Goulard, M., Poilvé, P., Féret, J.B. and G. Dedieu (2017): Detection of Flavescence dorée Grapevine Disease Using Unmanned Aerial Vehicle (UAV) Multispectral Imagery. Remote Sensing 9, 308.AlbetisJ.DuthoitS.GuttlerF.JacquinA.GoulardM.PoilvéP.FéretJ.B.DedieuG.2017Detection of Flavescence dorée Grapevine Disease Using Unmanned Aerial Vehicle (UAV) Multispectral Imagery930810.3390/rs9040308Search in Google Scholar
Bietresato, M., Carabin, G., Vidoni, R., Gasparetto, A. and F. Mazzetto (2016): Evaluation of a LiDAR-based 3D-stereoscopic vision system for crop-monitoring applications. Computers and Electronics Agriculture 124, 1–13.BietresatoM.CarabinG.VidoniR.GasparettoA.MazzettoF.2016Evaluation of a LiDAR-based 3D-stereoscopic vision system for crop-monitoring applications12411310.1016/j.compag.2016.03.017Search in Google Scholar
D’Auria, D., Ristorto, G., Persia, F., Vidoni, R. and F. Mazzetto (2016): Development and preliminary tests of a crop monitoring mobile lab based on a combined use of optical sensors. International Journal of Computer & Software Engineering 1, 103.D’AuriaD.RistortoG.PersiaF.VidoniR.MazzettoF.2016Development and preliminary tests of a crop monitoring mobile lab based on a combined use of optical sensors110310.15344/2456-4451/2016/103Search in Google Scholar
Dias, P.A., Tabb, A. and H. Medeiros (2018): Apple flower detection using deep convolutional networks. Computers in Industry 99, 17–28.DiasP.A.TabbA.MedeirosH.2018Apple flower detection using deep convolutional networks99172810.1016/j.compind.2018.03.010Search in Google Scholar
Di Gennaro, S.F., Battiston, E., Di Marco, S., Facini, O., Matese, A., Nocentini, M., Palliotti, A. and L. Mugnai (2016): Unmanned Aerial Vehicle (UAV)-based remote sensing to monitor grapevine leaf stripe disease within a vineyard affected by esca complex. Phytopathologia Mediterranea 55, 262–275.Di GennaroS.F.BattistonE.Di MarcoS.FaciniO.MateseA.NocentiniM.PalliottiA.MugnaiL.2016Unmanned Aerial Vehicle (UAV)-based remote sensing to monitor grapevine leaf stripe disease within a vineyard affected by esca complex55262275Search in Google Scholar
Gallo, R., Ristorto, G., Daglio, G., Massa, N., Berta, G., Lazzari, M. and F. Mazzetto (2017): New solutions for the automatic early detection of diseases in vineyards through ground sensing approaches integrating lidar and optical sensors, Chemical Engineering Transactions 58, 673–678.GalloR.RistortoG.DaglioG.MassaN.BertaG.LazzariM.MazzettoF.2017New solutions for the automatic early detection of diseases in vineyards through ground sensing approaches integrating lidar and optical sensors58673678Search in Google Scholar
Gongal, A., Karkee, M. and S. Amatya (2018): Apple fruit size estimation using a 3D machine vision system. Information Processing Agriculture 5, 498–503.GongalA.KarkeeM.AmatyaS.2018Apple fruit size estimation using a 3D machine vision system549850310.1016/j.inpa.2018.06.002Search in Google Scholar
Hočevar, M., Širok, B., Godeša, T. and M. Stopar (2014): Flowering estimation in apple orchards by image analysis. Precision Agriculture 15, 466–478.HočevarM.ŠirokB.GodešaT.StoparM.2014Flowering estimation in apple orchards by image analysis1546647810.1007/s11119-013-9341-6Search in Google Scholar
Maharlooei, M., Sivarajan, S., Nowatzki, J., Bajwa, S.G. and H. Kandel (2014): Evaluation of in-field sensors to monitor nitrogen status in soybean crops. 12th International Conference on Precision Agriculture, 20–23 July 2014, Sacramento, California, International Society of Precision Agriculture.MaharlooeiM.SivarajanS.NowatzkiJ.BajwaS.G.KandelH.201412th International Conference on Precision Agriculture20–23 July 2014Sacramento, CaliforniaInternational Society of Precision AgricultureSearch in Google Scholar
Ristorto, G., Gallo, R., Gasparetto, A., Scalera, L., Vidoni, R. and F. Mazzetto (2017): A mobile laboratory for orchard health status monitoring in precision farming. Chemical Engineering Transactions 58, 661–666.RistortoG.GalloR.GasparettoA.ScaleraL.VidoniR.MazzettoF.2017A mobile laboratory for orchard health status monitoring in precision farming58661666Search in Google Scholar
Rosell, J.R, Llorens, j., Sanz, R., Arnó, J., Ribes-Dasi, M., Masip, J., Escolá, A., Camp, F., Solanelles, F., Gràcia, F., Gil, E., Val, L., Planas, S. and J. Palacin (2009): Obtaining the three-dimensional structure of tree orchards from remote 2D terrestrial LIDAR scanning. Agricultural and Forest Meteorology 149, 1505–1515.RosellJ.RLlorensj.SanzR.ArnóJ.Ribes-DasiM.MasipJ.EscoláA.CampF.SolanellesF.GràciaF.GilE.ValL.PlanasS.PalacinJ.2009Obtaining the three-dimensional structure of tree orchards from remote 2D terrestrial LIDAR scanning1491505151510.1016/j.agrformet.2009.04.008Search in Google Scholar
Xiao, C., Zheng, L., Sun, H., Zhang, Y. and M. Li (2014): Estimation of the apple flowers based on aerial multi-spectral image. American Society of Agricultural and Biological Engineers, Paper No. 141912593.XiaoC.ZhengL.SunH.ZhangY.LiM.2014American Society of Agricultural and Biological EngineersPaper No. 141912593Search in Google Scholar