Implementación de Algoritmos de Procesamiento Digital de Señales en Hardware Paralelo: Artículo de revisión

Autores/as

DOI:

https://doi.org/10.20983/culcyt.2018.3.10

Palabras clave:

Procesamiento digital de señales, Algoritmos, Hardware paralelo

Resumen

Sobre el procesamiento digital de señales con sistemas de computadoras con capacidades genéricas, en su mayoría de un solo procesador multinúcleo

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Publicado

2018-12-11

Cómo citar

Bravo Martínez, G., Silva Aceves, J. M., Torres Argüelles, S. V., & Enríquez Aguilera, F. J. (2018). Implementación de Algoritmos de Procesamiento Digital de Señales en Hardware Paralelo: Artículo de revisión. Cultura Científica Y Tecnológica, (66). https://doi.org/10.20983/culcyt.2018.3.10