IAM4MARS

Intelligent Automated Methods for Monitoring Agriculture with Remote Sensing

 Coordinatore ULUSLARARASI ANTALYA UNIVERSITESI 

 Organization address address: SIRINYALI MAH METIN KASAPOGLU CAD 60
city: ANTALYA
postcode: 7230

contact info
Titolo: Mr.
Nome: Ilker
Cognome: Sokmen
Email: send email
Telefono: +90 5532390303

 Nazionalità Coordinatore Turkey [TR]
 Totale costo 100˙000 €
 EC contributo 100˙000 €
 Programma FP7-PEOPLE
Specific programme "People" implementing the Seventh Framework Programme of the European Community for research, technological development and demonstration activities (2007 to 2013)
 Code Call FP7-PEOPLE-2013-CIG
 Funding Scheme MC-CIG
 Anno di inizio 2013
 Periodo (anno-mese-giorno) 2013-08-01   -   2017-07-31

 Partecipanti

# participant  country  role  EC contrib. [€] 
1    ULUSLARARASI ANTALYA UNIVERSITESI

 Organization address address: SIRINYALI MAH METIN KASAPOGLU CAD 60
city: ANTALYA
postcode: 7230

contact info
Titolo: Mr.
Nome: Ilker
Cognome: Sokmen
Email: send email
Telefono: +90 5532390303

TR (ANTALYA) coordinator 100˙000.00

Mappa


 Word cloud

Esplora la "nuvola delle parole (Word Cloud) per avere un'idea di massima del progetto.

spatial    university    million    agricultural    spectral    criteria    clustering    he    similarity    resolution    award    remote    monitoring    images    received    sensing    automated    data   

 Obiettivo del progetto (Objective)

'Remote sensing images have been a significant information source for many different applications, especially for monitoring agricultural and environmental resources. Yet knowledge extraction from them is often performed by domain experts using heavily interactive computer-aided photo-interpretations due to lack of powerful automated methods. Improved spatial/spectral resolution in recent years provides details for precise monitoring, in expense of making the problem even more complicated. For monitoring agriculture in Europe, we will innovatively propose an unsupervised automated method (with limited interaction) based on advanced similarity criteria utilizing spectral/spatial characteristics and on manifold learning techniques for clustering large data sets of very-high resolution images. This will provide a fast and accurate approach for assessment of agricultural systems at the community level, which is currently done by expert image analysis. In addition, the research addressed here (novel similarity criteria harnessing different types of information and hybrid clustering), which will certainly contribute to the EU’s research excellence in remote-sensing and data mining, are expected to be advantageous for other remote-sensing applications, and also for clustering other large data sets. This will lead to interdisciplinary applications of the proposed study resulting in greater applicability beyond agricultural monitoring (which has already a broad application area encompassing whole EU, concerning about 9 million farmers and 140 million reference parcels).

The CIG will integrate Dr. TaÅŸdemir, an early career researcher with postdoctoral experience at EC Joint Research Centre (where he received the best young scientist award) and a PhD from Rice University, USA (where he received an award for contributions to graduate life), to establish his lab at Antalya International University, for research training and attracting talented individuals in the remote-sensing.'

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GMULTI (2008)

Multiplex detection of (un)authorized GMOs in food and feed

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ADAPTIVE SPECIATION (2008)

Evolution of reproductive barriers and its implications for adaptive speciation

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HYBRID-GENES (2015)

The Repeatability of Genetic Architecture

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