DensePANet: An improved generative adversarial network for photoacoustic tomography image reconstruction from sparse data
Hesam Hakimnejad, Zohreh Azimifar, Narjes Goshtasbi

TL;DR
DensePANet is a novel GAN-based approach that significantly improves photoacoustic tomography image reconstruction from sparse data, utilizing a modified UNet architecture for enhanced performance.
Contribution
The paper introduces DensePANet with a new FD-UNet++ generator, advancing deep learning methods for sparse PAT image reconstruction.
Findings
Outperforms existing deep learning techniques in reconstruction quality
Effective on both in-vivo and simulated datasets
Reduces artifacts in sparse data reconstructions
Abstract
Image reconstruction is an essential step of every medical imaging method, including Photoacoustic Tomography (PAT), which is a promising modality of imaging, that unites the benefits of both ultrasound and optical imaging methods. Reconstruction of PAT images using conventional methods results in rough artifacts, especially when applied directly to sparse PAT data. In recent years, generative adversarial networks (GANs) have shown a powerful performance in image generation as well as translation, rendering them a smart choice to be applied to reconstruction tasks. In this study, we proposed an end-to-end method called DensePANet to solve the problem of PAT image reconstruction from sparse data. The proposed model employs a novel modification of UNet in its generator, called FD-UNet++, which considerably improves the reconstruction performance. We evaluated the method on various in-vivo…
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Taxonomy
TopicsPhotoacoustic and Ultrasonic Imaging · Thermography and Photoacoustic Techniques · Advanced X-ray and CT Imaging
