Variational Bayesian Blind Color Deconvolution of Histopathological Images
Metadatos
Mostrar el registro completo del ítemAutor
Hidalgo-Gavira, Natalia; Mateos Delgado, Javier; Vega López, Miguel; Molina Soriano, Rafael; Katsaggelos, AggelosEditorial
IEEE
Materia
Blind color deconvolution histopathological images Bayesian modeling and inference variational Bayes
Fecha
2019-10-15Referencia bibliográfica
N. Hidalgo-Gavira, J. Mateos, M. Vega, R. Molina, and A. K. Katsaggelos, “Variational Bayesian Blind Color Deconvolution of Histopathological Images,” IEEE Transactions on Image Processing, vol. 29, pp. 2026–2036, 2020.
Patrocinador
Visual Information Processing (Ref. TIC-116)Resumen
Most whole-slide histological images are stained with two or more chemical dyes. Slide stain separation or color deconvolution is a crucial step within the digital pathology workflow. In this paper, the blind color deconvolution problem is formulated within the Bayesian framework. Starting from a multi-stained histological image, our model takes into account both spatial relations among the concentration image pixels and similarity between a given reference color-vector matrix and the estimated one. Using Variational Bayes inference, three efficient new blind color deconvolution methods are proposed which provide automated procedures to estimate all the model parameters in the problem. A comparison with classical and current state-of-the-art color deconvolution algorithms using real images has been carried out demonstrating the superiority of the proposed approach.