Department of Electronic Engineering, Fudan University, No. 220 Handan Road, Shanghai, 200433, China.
Key Laboratory of Medical Imaging Computing and Computer Assisted Intervention (MICCAI) of Shanghai, Fudan University, Shanghai, 200433, China.
Biomed Eng Online. 2018 Aug 3;17(1):105. doi: 10.1186/s12938-018-0537-x.
For practical straight-line scanning in photoacoustic imaging (PAI), serious artifacts caused by missing data will occur. Traditional total variation (TV)-based algorithms fail to obtain satisfactory results, with an over-smoothed and blurred geometric structure. Therefore, it is important to develop a new algorithm to improve the quality of practical straight-line reconstructed images.
In this paper, a combined nonlocal patch and TV-based regularization model for PAI reconstruction is proposed to solve these problems. A modified adaptive nonlocal weight function is adopted to provide more reliable estimations for the similarities between patches. Similar patches are searched for throughout the entire image; thus, this model realizes adaptive search for the neighborhood of the patch. The optimization problem is simplified to a common iterative PAI reconstruction problem.
The proposed algorithm is validated by a series of numerical simulations and an in vitro experiment for straight-line scanning. The results of patch-TV are compared to those of two mainstream TV-based algorithms as well as the iterative algorithm only with patch-based regularization. Moreover, the peak signal-to-noise ratio, the noise robustness, and the convergence and calculation speeds are compared and discussed. The results show that the proposed patch-TV yields significant improvement over the other three algorithms qualitatively and quantitatively. These simulations and experiment indicate that the patch-TV algorithm successfully solves the problems of PAI reconstruction and is highly effective in practical PAI applications.
在光声成像(PAI)中进行实际直线扫描时,会出现严重的数据缺失伪影。传统的基于全变分(TV)的算法无法获得令人满意的结果,因为会导致几何结构过度平滑和模糊。因此,开发一种新的算法来提高实际直线重建图像的质量非常重要。
本文提出了一种基于非局部补丁和 TV 的组合正则化模型来解决这些问题。采用改进的自适应非局部权重函数对补丁之间的相似性进行更可靠的估计。通过在整个图像中搜索相似补丁,该模型实现了对补丁邻域的自适应搜索。将优化问题简化为常见的迭代 PAI 重建问题。
通过一系列数值模拟和直线扫描的体外实验验证了所提出的算法。将补丁-TV 的结果与两种主流的基于 TV 的算法以及仅基于补丁正则化的迭代算法进行了比较。此外,还比较和讨论了峰值信噪比、噪声鲁棒性以及收敛和计算速度。结果表明,与其他三种算法相比,所提出的补丁-TV 在定性和定量方面都有显著的改进。这些模拟和实验表明,补丁-TV 算法成功地解决了 PAI 重建问题,在实际的 PAI 应用中非常有效。