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of Sentinel-2 fluvial scenes’. Earth Surf. Process. Landforms, 45, 3120–3140. Carbonneau et al 2020) ‘Adopting deep learning methods for airborne RGB fluvial scene classification’. Remote Sensing of Environment
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to provide apes with a sense of agency. As a result we hope to develop techniques which will build resilience, improving the welfare and conservation outcomes for great apes in zoos, sanctuaries and
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Trust) and Bangor University’s Wynne Humphrey Davies Fund, the project will develop advanced nano-imaging and nano-sensing technologies, enhanced by AI-driven analysis. It aims to uncover new insights
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. For others, blue space may represent a trusted form of flood protection or contribute to the sense of place and pride in an area. This exciting PhD studentship will investigate how the dynamic form and
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Researcher will influence the direction of application areas and algorithm development, receiving direct training in InSAR processing, geospatial data science, and agricultural remote sensing. Co-supervision
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interest, narrowing the scope to natural or cultural sites, and integrating diverse remote sensing datasets. The supervisory team offers interdisciplinary expertise in geospatial analysis, machine learning
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. This PhD project will investigate the interactions between wildfire disturbance and thermokarst dynamics across Siberia and other Arctic regions using multi-sensor satellite remote sensing data provided by
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, there is currently no biosensor that can reliably detect key TLS biomarkers. This PhD project will focus on developing novel biosensors that integrate platform sensing technology with tailored electroactive
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sensor designs should achieve high sensitivity to very small pressure change, making them suited to wireless motility sensing. The sensor will be created used microfabrication techniques such as soft
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the epithelial lining, each will be tailored to sense either serotonin and/or acetylcholine. The microneedles will be made from biocompatible materials and fabricated using MEMS techniques, ensuring enough