Artículo
Combining band-frequency separation and deep neural networks for optoacoustic imaging
Fecha de publicación:
04/2023
Editorial:
Elsevier
Revista:
Optics And Lasers In Engineering
ISSN:
0143-8166
Idioma:
Inglés
Tipo de recurso:
Artículo publicado
Clasificación temática:
Resumen
In this paper we consider the problem of image reconstruction in optoacoustic tomography. In particular, we devise a deep neural architecture that can explicitly take into account the band-frequency information contained in the sinogram. This is accomplished by two means. First, we jointly use a linear filtered back-projection method and a fully dense UNet for the generation of the images corresponding to each one of the frequency bands considered in the separation. Secondly, in order to train the model, we introduce a special loss function consisting of three terms: (i) a separating frequency bands term; (ii) a sinogram-based consistency term and (iii) a term that directly measures the quality of image reconstruction and which takes advantage of the presence of ground-truth images present in training dataset. Numerical experiments show that the proposed model, which can be easily trainable by standard optimization methods, presents an excellent generalization performance quantified by a number of metrics commonly used in practice. Also, in the testing phase, our solution has a comparable (in some cases lower) computational complexity, which is a desirable feature for real-time implementation of optoacoustic imaging.
Palabras clave:
DEEP LEARNING
,
FD-UNET
,
LOSS FUNCTION
,
PHOTOACOUSTIC
,
TOMOGRAPHY
Archivos asociados
Licencia
Identificadores
Colecciones
Articulos(CSC)
Articulos de CENTRO DE SIMULACION COMPUTACIONAL P/APLIC. TECNOLOGICAS
Articulos de CENTRO DE SIMULACION COMPUTACIONAL P/APLIC. TECNOLOGICAS
Citación
González, Martín Germán; Vera, Matías Alejandro; Rey Vega, Leonardo Javier; Combining band-frequency separation and deep neural networks for optoacoustic imaging; Elsevier; Optics And Lasers In Engineering; 163; 4-2023; 1-8
Compartir
Altmétricas