Enhancing spatio-temporal environmental analyses: A machine learning superpixel-based approach

Estefania Salazar, Enrique ORCID: https://orcid.org/0000-0001-5738-922X and Iglesias Martínez, Eva ORCID: https://orcid.org/0000-0002-7086-7553 (2024). Enhancing spatio-temporal environmental analyses: A machine learning superpixel-based approach. "Heliyon", v. 10 (n. 14); pp.. ISSN 24058440. https://doi.org/10.1016/j.heliyon.2024.e34711.

Descripción

Título: Enhancing spatio-temporal environmental analyses: A machine learning superpixel-based approach
Autor/es:
Tipo de Documento: Artículo
Título de Revista/Publicación: Heliyon
Fecha: 30 Julio 2024
ISSN: 24058440
Volumen: 10
Número: 14
Materias:
ODS:
Palabras Clave Informales: Big Data; Dimension reduction; Environmental analysis; Machine Learning; Superpixel; Vegetation indice; Vegetation indices
Escuela: Centro de Estudios e Investigación para la Gestión de Riesgos Agrarios y Medioambientales (CEIGRAM) (UPM)
Departamento: Economía Agraria, Estadística y Gestión de Empresas
Licencias Creative Commons: Reconocimiento

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Resumen

The progressive evolution of the spatial and temporal resolutions of Earth observation satellites has brought multiple benefits to scientific research. The increasing volume of data with higher frequencies and spatial resolutions offers precise and timely information, making it an invaluable tool for environmental analysis and enhanced decision-making. However, this presents a formidable challenge for large-scale environmental analyses and socioeconomic applications based on spatial time series, often compelling researchers to resort to lower-resolution imagery, which can introduce uncertainty and impact results. In response to this, our key contribution is a novel machine learning approach for dense geospatial time series rooted in superpixel segmentation, which serves as a preliminary step in mitigating the high dimensionality of data in large-scale applications. This approach, while effectively reducing dimensionality, preserves valuable information to the maximum extent, thereby substantially enhancing data accuracy and subsequent environmental analyses. This method was empirically applied within the context of a comprehensive case study encompassing the 2002-2022 period with 8-d-frequency-normalized difference vegetation index data at 250-m resolution in an area spanning 43,470 km2. The efficacy of this methodology was assessed through a comparative analysis, comparing our results with those derived from 1000-m-resolution satellite data and an existing superpixel algorithm for time series data. An evaluation of the time-series deviations revealed that using coarser-resolution pixels introduced an error that exceeded that of the proposed algorithm by 25 % and that the proposed methodology outperformed other algorithms by more than 9 %. Notably, this methodological innovation concurrently facilitates the aggregation of pixels sharing similar land-cover classifications, thus mitigating subpixel heterogeneity within the dataset. Further, the proposed methodology, which is used as a preprocessing step, improves the clustering of pixels according to their time series and can enhance large-scale environmental analyses across a wide range of applications.

Más información

ID de Registro: 92051
Identificador DC: https://oa.upm.es/92051/
Identificador OAI: oai:oa.upm.es:92051
URL Portal Científico: https://portalcientifico.upm.es/es/ipublic/item/10241929
Identificador DOI: 10.1016/j.heliyon.2024.e34711
URL Oficial: https://www.sciencedirect.com/science/article/pii/...
Depositado por: iMarina Portal Científico
Depositado el: 28 Nov 2025 06:35
Ultima Modificación: 28 Nov 2025 06:35