Missing data reconstruction and anomaly detection in crop development using agronomic indicators derived from multispectral satellite images (regular paper). Albughdadi, M. Y., Kouamé, D., Rieu, G., & Tourneret, J. In IEEE International Geoscience & Remote Sensing Symposium (IGARSS 2017), Fort Worth, Texas, USA, 23/07/2017-28/07/2017, pages (electronic medium), http://www.ieee.org/, 2017. IEEE : Institute of Electrical and Electronics Engineers.
Missing data reconstruction and anomaly detection in crop development using agronomic indicators derived from multispectral satellite images (regular paper) [link]Paper  abstract   bibtex   
This paper studies a new three-step procedure for detecting anomalies in crop development using temporal indicators derived from multispectral satellite images. These anomalies may result from seeding problems, heterogeneity, deficiency and stress. The first step estimates different biophysical and statistical parameters associated with these parameters from the observed images. In a second step, missing data that arise from the existence of clouds or limited coverage in the satellite image are reconstructed. Finally, the mean shift algorithm is used as an unsupervised classifier to detect anomalies in these reconstructed data. The proposed procedure is evaluated using agronomic indicators estimated from SPOT 5 Take 5 satellite images from the Beauce area in France.
@InProceedings{ Al2017.3,
author = {Albughdadi, Mohanad Y.S. and Kouam\'e, Denis and Rieu, Guillaume and Tourneret, Jean-Yves},
title = "{Missing data reconstruction and anomaly detection in crop development using agronomic indicators derived from multispectral satellite images (regular paper)}",
booktitle = "{IEEE International Geoscience & Remote Sensing Symposium (IGARSS 2017), Fort Worth, Texas, USA, 23/07/2017-28/07/2017}",
year = {2017},
publisher = {IEEE : Institute of Electrical and Electronics Engineers},
address = {http://www.ieee.org/},
pages = {(electronic medium)},
language = {anglais},
URL = {https://doi.org/10.1109/IGARSS.2017.8128145 - https://oatao.univ-toulouse.fr/22151/},
abstract = {This paper studies a new three-step procedure for detecting anomalies in crop development using temporal indicators derived from multispectral satellite images. These anomalies may result from seeding problems,
heterogeneity, deficiency and stress. The first step estimates different biophysical and statistical parameters associated with these parameters from the observed images. In a second step, missing data that arise from the
existence of clouds or limited coverage in the satellite image are reconstructed. Finally, the mean shift algorithm is used as an unsupervised classifier to detect anomalies in these reconstructed data. The proposed procedure is
evaluated using agronomic indicators estimated from SPOT 5 Take 5 satellite images from the Beauce area in France.}
}

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