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1Academic Journal
المؤلفون: Pulgarín Giraldo, Juan Diego
المساهمون: Álvarez Meza, Andrés Marino, Castellanos Domínguez, César Germán, Grupo de Control y Procesamiento Digital de Señales
مصطلحات موضوعية: 510 - Matemáticas::515 - Análisis, 620 - Ingeniería y operaciones afines, 620 - Ingeniería y operaciones afines::629 - Otras ramas de la ingeniería, Disimilaridad, Análisis de movimiento humano, Inmersiones de espacios de Hilbert, Filtros adaptativos kernel, Discrepancia media máxima, Captura de movimiento, Series de tiempo multicanal, Dissimilarity representation, Hilbert space embeddings, Human action analysis, Kernel adaptive filters, Maximum mean discrepancy, Motion capture data, Multichannel time series
وصف الملف: application/pdf
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