ITCVFeb 9, 2012

Compressed Beamforming in Ultrasound Imaging

arXiv:1202.6037v2219 citations
AI Analysis

This work addresses data and power constraints in medical ultrasound systems, offering a domain-specific incremental improvement.

The paper tackled the problem of high data acquisition and processing rates in ultrasound imaging by proposing compressed beamforming, which beamforms sub-Nyquist samples from multiple transducer elements to enhance SNR, achieving an eight-fold reduction in sample-rate while successfully imaging cardiac perturbations.

Emerging sonography techniques often require increasing the number of transducer elements involved in the imaging process. Consequently, larger amounts of data must be acquired and processed. The significant growth in the amounts of data affects both machinery size and power consumption. Within the classical sampling framework, state of the art systems reduce processing rates by exploiting the bandpass bandwidth of the detected signals. It has been recently shown, that a much more significant sample-rate reduction may be obtained, by treating ultrasound signals within the Finite Rate of Innovation framework. These ideas follow the spirit of Xampling, which combines classic methods from sampling theory with recent developments in Compressed Sensing. Applying such low-rate sampling schemes to individual transducer elements, which detect energy reflected from biological tissues, is limited by the noisy nature of the signals. This often results in erroneous parameter extraction, bringing forward the need to enhance the SNR of the low-rate samples. In our work, we achieve SNR enhancement, by beamforming the sub-Nyquist samples obtained from multiple elements. We refer to this process as "compressed beamforming". Applying it to cardiac ultrasound data, we successfully image macroscopic perturbations, while achieving a nearly eight-fold reduction in sample-rate, compared to standard techniques.

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