2021
DOI: 10.1515/itit-2020-0045
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A qualitative study of Machine Learning practices and engineering challenges in Earth Observation

Abstract: Machine Learning (ML) is ubiquitously on the advance. Like many domains, Earth Observation (EO) also increasingly relies on ML applications, where ML methods are applied to process vast amounts of heterogeneous and continuous data streams to answer socially and environmentally relevant questions. However, developing such ML- based EO systems remains challenging: Development processes and employed workflows are often barely structured and poorly reported. The application of ML methods and techniques is consider… Show more

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