Métodos digitales para analizar imágenes
Una Revisión Sistemática
DOI:
https://doi.org/10.22409/73z8th51Palabras clave:
métodos digitales, análisis de imágenes, imágenes digitales, revisión sistemáticaResumen
Este artículo investiga el uso de métodos digitales para el análisis de imágenes. A través de una revisión sistemática de la literatura de 41 estudios publicados entre 2013 y 2023 en inglés, español y portugués, la investigación aborda tres preguntas clave: (1) ¿Qué recursos se utilizan para el análisis de imágenes y colecciones de imágenes?; (2) ¿Cuándo se aplican estos recursos?; y (3) ¿Cómo se implementan? La revisión, realizada en cuatro bases de datos académicas, identificó 76 recursos distintos, categorizados por etapa de la investigación (recopilación de datos, refinamiento de conjuntos de datos, análisis de imágenes y construcción de visualizaciones) y por la exigencia de habilidades de programación. El estudio destaca los principales enfoques para el análisis de imágenes digitales, la naturaleza dinámica de las herramientas digitales y la adaptabilidad de los investigadores para reutilizar recursos en el análisis de imágenes.
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