Signal recovery in noisy spatial data
Bidragets beskrivning
 Our world is constantly measured where phenomena are often indexed in space which is then referred to as spatial data. The amount of  data collected this way is huge and it is thought that not all that data is informative and the working premise of dimension reduction is  that all relevant information lies in a signal subspace and the rest of the space contains only noise. The goal in this project is to derive  dimension reduction methods for such data which are based only on the information from the random phenomena, which means they  are blind and therefore known as blind source separation (BSS) methods. The phenomena under consideration can for example be  vectors like geochemical compositions of soil at different locations or functions as for example chemical spectra obtained from soil  samples at these locations. Usually the dimension of the signal space is unknown and tools for its estimation are to be developed too,  together with efficient BSS software. 
Visa merStartår
 2024 
Slutår
 2028 
Beviljade finansiering
Finansiär
 Finlands Akademi 
Typ av finansiering
 Akademiprojekt 
Utlysning
Beslutfattare
 Forskningsrådet för naturvetenskap och teknik 
13.06.2024
13.06.2024
Övriga uppgifter
Finansieringsbeslutets nummer
 363261 
Vetenskapsområden
 Statistik 
Forskningsområden
 Tilastotiede 
Identifierade teman
 space,  physics