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Nunzio Briglia

Researcher at University of Basilicata

Publications -  12
Citations -  162

Nunzio Briglia is an academic researcher from University of Basilicata. The author has contributed to research in topics: Stomatal conductance & Agriculture. The author has an hindex of 5, co-authored 10 publications receiving 64 citations.

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In Vivo Phenotyping for the Early Detection of Drought Stress in Tomato.

TL;DR: Bioristor was able to detect changes of ion concentration in the sap upon drought, in particular, those dissolved and transported through the transpiration stream, thus efficiently detecting the occurrence of drought stress immediately after the priming of the defence responses.
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Can High Throughput Phenotyping Help Food Security in the Mediterranean Area

TL;DR: Results clearly indicate that HTP is able to discriminate genotypes and biostimulant treatments that allow plants to use soil water more efficiently, and these methods based on RGB quality images can easily be scaled to field phenotyping structure USVs or UAVs.
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Drought phenotyping in Vitis vinifera using RGB and NIR imaging

TL;DR: The outcomes presented may strengthen the role of RGB and NIR based images to identify the occurrence of water-stress in Vitis spp.
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Investigating the Impact of Biostimulants on the Row Crops Corn and Soybean Using High-Efficiency Phenotyping and Next Generation Sequencing

TL;DR: The proposed approach supports the integration of multiple omics to open new perspectives in the discovery, evaluation, and development of innovative and sustainable solutions to meet the increasing needs of row-crops agriculture.
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Image-Based Assessment of Drought Response in Grapevines.

TL;DR: The variation of leaf angle as measured by both 3D images and goniometer in progressively drought stressed grapevine is examined to retrieve reliable information on plant water status in a non-contact manner that has the potential to be scaled to high-throughput and repeated through time.