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PA-Fuse: deep supervised approach for the fusion of photoacoustic images with distinct reconstruction characteristics

Authors :
Phaneendra K. Yalavarthy
Manojit Pramanik
K. Ram Prabhakar
R. Venkatesh Babu
Navchetan Awasthi
Sandeep Kumar Kalva
School of Chemical and Biomedical Engineering
Source :
Biomedical Optics Express. 10:2227
Publication Year :
2019
Publisher :
The Optical Society, 2019.

Abstract

The methods available for solving the inverse problem of photoacoustic tomography promote only one feature–either being smooth or sharp–in the resultant image. The fusion of photoacoustic images reconstructed from distinct methods improves the individually reconstructed images, with the guided filter based approach being state-of-the-art, which requires that implicit regularization parameters are chosen. In this work, a deep fusion method based on convolutional neural networks has been proposed as an alternative to the guided filter based approach. It has the combined benefit of using less data for training without the need for the careful choice of any parameters and is a fully data-driven approach. The proposed deep fusion approach outperformed the contemporary fusion method, which was proved using experimental, numerical phantoms and in-vivo studies. The improvement obtained in the reconstructed images was as high as 95.49% in root mean square error and 7.77 dB in signal to noise ratio (SNR) in comparison to the guided filter approach. Also, it was demonstrated that the proposed deep fuse approach, trained on only blood vessel type images at measurement data SNR being 40 dB, was able to provide a generalization that can work across various noise levels in the measurement data, experimental set-ups as well as imaging objects. Published version

Details

ISSN :
21567085
Volume :
10
Database :
OpenAIRE
Journal :
Biomedical Optics Express
Accession number :
edsair.doi.dedup.....7d53ee8307b20a70e59d291d743786b8
Full Text :
https://doi.org/10.1364/boe.10.002227