Photoacoustic image reconstruction from a frequency-invariant source localization perspective

S. Salehin, T. Abhayapala
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引用次数: 4

Abstract

Photoacoustic imaging provides high spatial resolution images of biological tissues and is useful for molecular imaging. The exact reconstruction algorithms for photoacoustic imaging are either slow or assume a continuous sensor with infinite bandwidth. We propose a novel reconstruction method which expands the source distribution function in the Fourier-Bessel domain. The source distribution can be reconstructed from frequency samples corresponding to the Bessel zeros. Sparsity of the source distribution in the Fourier-Bessel domain makes reconstruction faster. Further, this method was extended to the discrete aperture and a condition was derived to avoid spatial aliasing. The proposed method was verified using numerical simulations.
从频率不变源定位角度的光声图像重建
光声成像提供了生物组织的高空间分辨率图像,对分子成像很有用。光声成像的精确重建算法要么是缓慢的,要么是假设一个无限带宽的连续传感器。提出了一种在傅里叶-贝塞尔域扩展源分布函数的重构方法。源分布可以由贝塞尔零对应的频率样本重构。傅里叶-贝塞尔域源分布的稀疏性使得重构速度更快。将该方法推广到离散孔径,推导出避免空间混叠的条件。数值模拟验证了该方法的有效性。
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