L. F. Johnson, D. E. Roczen, S. K. Youkhana, R. R. Nemani, and D. F. Bosch, Mapping vineyard leaf area with multispectral satellite imagery, Computers and Electronics in Agriculture, vol.38, pp.33-44, 2003.

F. André, High-resolution imaging of a vineyard in south of France using ground penetrating radar and electromagnetic induction, Proceedings of the XIII International Conference on Ground Penetrating Radar, pp.1-8, 2010.

M. Larrain, A. R. Guesalaga, and E. Agosin, A Multipurpose Portable Instrument for Determining Ripeness in Wine Grapes Using NIR Spectroscopy, IEEE Transactions on Instrumentation and Measurement, vol.57, issue.2, pp.294-302, 2008.

V. M. Gomes, A. M. Fernandes, A. Faia, and P. Melo-pinto, Determination of sugar content in whole Port Wine grape berries combining hyperspectral imaging with neural networks methodologies, CIES) 2014 IEEE Symposium on, pp.188-193, 2014.

R. G. Bramley, Progress in the Development of Precision Viticulture-Variation in Yield, Quality and Soil Properties in Contrasting Australian Vineyards, Precision Tools for Improving Land Management, pp.25-43, 2001.

A. Burini, G. Schiavon, and D. Solimini, Fusion of High Resolution Polarimetric SAR and Multi-Spectral Optical Data for Precision Viticulture, IGARSS 2008-2008 IEEE International Geoscience and Remote Sensing Symposium, 2008.

L. Sun, Daily mapping of Landsat-like LAI and correlation to grape yield, 2016 IEEE International Geoscience and Remote Sensing Symposium (IGARSS), pp.7157-7160, 2016.

R. Sanz, J. R. Rosell, J. Llorens, E. Gil, and S. Planas, Relationship between tree row LIDARvolume and leaf area density for fruit orchards and vineyards obtained with a LIDAR 3D Dynamic Measurement System, Agric. Forest Meteorol, vol.171, pp.153-162, 2013.

P. Dolezel, P. Skrabanek, and L. Gago, Detection of grapes in natural environment using feedforward neural network as a classifier, 2016 SAI Computing Conference (SAI), pp.1330-1334, 2016.