Deep Learning Improves Dataset Recovery for High Frame Rate Synthetic Transmit Aperture Imaging
Jingke Zhang, Jianwen Luo

TL;DR
This paper introduces a CNN-based method within a null space learning framework to enhance dataset recovery in synthetic transmit aperture imaging, significantly reducing artifacts and maintaining high resolution with fewer transmissions.
Contribution
The study proposes a novel CNN-STA approach that accurately recovers high-quality STA datasets from limited data by learning the null space component, outperforming previous LS-STA methods.
Findings
CNN-STA improves dataset recovery accuracy.
The method reduces artifacts in beamformed images.
High resolution is maintained with fewer transmissions.
Abstract
Synthetic transmit aperture (STA) imaging can achieve optimal lateral resolution in the full field of view, at the cost of low frame rate (FR) and low signal-to-noise ratio (SNR). In our previous studies, compressed sensing based synthetic transmit aperture (CS-STA) and minimal l2-norm least squares (LS-STA) methods were proposed to recover the complete STA dataset from fewer Hadamard-encoded plane wave (PW) transmissions. Results demonstrated that, compared with STA imaging, CS/LS-STA can maintain the high resolution of STA and improve the contrast in the deep region with increased FR. However, these methods would introduce errors to the recovered STA datasets and subsequently produce severe artifacts to the beamformed images. Recently, we discovered that the theoretical explanation for the error introduced in the LS-STA-based recovery is that LS-STA method neglects the null space…
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Taxonomy
TopicsUltrasound Imaging and Elastography · Photoacoustic and Ultrasonic Imaging · Ultrasound and Hyperthermia Applications
