Indirect Prediction of Salt Affected Soil Indicator Properties through Habitat Types of a Natural Saline Grassland Using Unmanned Aerial Vehicle Imagery
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T. Tóth | J. Mészáros | L. Pásztor | Gábor Szatmári | Z. Kovács | K. Takács | K. Balog | P. László | M. Árvai | S. Koós | G. Barna
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