Artículo
Fast FPGA-Based Image Feature Extraction for Data Fusion in Autonomous Vehicles
Gaia Amorós, Jeremías
; Orosco, Eugenio Conrado
; Rossomando, Francisco Guido
; Soria, Carlos Miguel
Fecha de publicación:
11/2023
Editorial:
SCI-THOTH Editorial
Revista:
International Journal of Engineering Insights
e-ISSN:
3028-8606
Idioma:
Inglés
Tipo de recurso:
Artículo publicado
Clasificación temática:
Resumen
Computer vision plays a critical role in many applications, particularly in the domain of autonomous vehicles. To achieve high-level image processing tasks such as image classification and object tracking, it is essential to extract low-level features from the image data. However, in order to integrate these compute-intensive tasks into a control loop, they must be completed as quickly as possible. This paper presents a novel FPGA-based system for fast and accurate image feature extraction, specifically designed to meet the constraints of data fusion in autonomous vehicles. The system computes a set of generic statistical image features, including contrast, homogeneity, and entropy, and is implemented on two Xilinx FPGA platforms - an Alveo U200 Data Center Accelerator Card and a Zynq UltraScale+ MPSoC ZCU104 Evaluation Kit. Experimental results show that the proposed system achieves high-speed image feature extraction with low latency, making it well-suited for use in autonomous vehicle systems that require real-time image processing. The presented system can also be easily extended to extract additional features for various image and data fusion applications.
Palabras clave:
FPGA
,
SoC
,
Image Processing
,
xfOpencv
Archivos asociados
Licencia
Identificadores
Colecciones
Articulos(INAUT)
Articulos de INSTITUTO DE AUTOMATICA
Articulos de INSTITUTO DE AUTOMATICA
Citación
Gaia Amorós, Jeremías; Orosco, Eugenio Conrado; Rossomando, Francisco Guido; Soria, Carlos Miguel; Fast FPGA-Based Image Feature Extraction for Data Fusion in Autonomous Vehicles; SCI-THOTH Editorial; International Journal of Engineering Insights; 1; 1; 11-2023; 1-8
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