Hill Emma R, Xia Wenfeng, Clarkson Matthew J, Desjardins Adrien E
Department of Medical Physics and Biomedical Engineering, University College London, Gower Street, London, WC1E 6BT, UK; Equal contribution.
Translational Imaging Group (TIG), Centre for Medical Image Computing (CMIC), Dept. of Medical Physics and Biomedical Engineering, University College London, Gower Street, London, WC1E 6BT, UK.
Biomed Opt Express. 2016 Dec 5;8(1):68-77. doi: 10.1364/BOE.8.000068. eCollection 2017 Jan 1.
Singular value decomposition (SVD) was used to identify and remove laser-induced noise in photoacoustic images acquired with a clinical ultrasound scanner. This noise, which was prominent in the radiofrequency data acquired in parallel from multiple transducer elements, was induced by the excitation light source. It was modelled by truncating the SVD matrices so that only the first few largest singular value components were retained, and subtracted prior to image reconstruction. The dependency of the signal amplitude and the number of the largest singular value components used for noise modeling was investigated for different photoacoustic source geometries. Validation was performed with simulated data and measured noise, and with photoacoustic images acquired from the human forearm and finger using L14-5/38 and L40-8/12 linear array clinical imaging probes. The use of only one singular value component was found to be sufficient to achieve near-complete removal of laser-induced noise from reconstructed images. This method has strong potential to increase image quality for a wide range of photoacoustic imaging systems with parallel data acquisition.
奇异值分解(SVD)被用于识别和去除使用临床超声扫描仪采集的光声图像中的激光诱导噪声。这种噪声在从多个换能器元件并行采集的射频数据中很突出,是由激发光源引起的。通过截断SVD矩阵对其进行建模,以便仅保留前几个最大的奇异值分量,并在图像重建之前将其减去。针对不同的光声源几何形状,研究了信号幅度与用于噪声建模的最大奇异值分量数量之间的相关性。使用模拟数据和测量噪声以及使用L14 - 5/38和L40 - 8/12线性阵列临床成像探头从人体前臂和手指采集的光声图像进行了验证。发现仅使用一个奇异值分量就足以从重建图像中几乎完全去除激光诱导噪声。该方法对于具有并行数据采集的广泛光声成像系统具有提高图像质量的强大潜力。