I3S laboratory, Sophia-Antipolis, France.
IEEE Trans Image Process. 2012 Apr;21(4):1834-46. doi: 10.1109/TIP.2011.2175934. Epub 2011 Nov 15.
Deblurring noisy Poisson images has recently been a subject of an increasing amount of works in many areas such as astronomy and biological imaging. In this paper, we focus on confocal microscopy, which is a very popular technique for 3-D imaging of biological living specimens that gives images with a very good resolution (several hundreds of nanometers), although degraded by both blur and Poisson noise. Deconvolution methods have been proposed to reduce these degradations, and in this paper, we focus on techniques that promote the introduction of an explicit prior on the solution. One difficulty of these techniques is to set the value of the parameter, which weights the tradeoff between the data term and the regularizing term. Only few works have been devoted to the research of an automatic selection of this regularizing parameter when considering Poisson noise; therefore, it is often set manually such that it gives the best visual results. We present here two recent methods to estimate this regularizing parameter, and we first propose an improvement of these estimators, which takes advantage of confocal images. Following these estimators, we secondly propose to express the problem of the deconvolution of Poisson noisy images as the minimization of a new constrained problem. The proposed constrained formulation is well suited to this application domain since it is directly expressed using the antilog likelihood of the Poisson distribution and therefore does not require any approximation. We show how to solve the unconstrained and constrained problems using the recent alternating-direction technique, and we present results on synthetic and real data using well-known priors, such as total variation and wavelet transforms. Among these wavelet transforms, we specially focus on the dual-tree complex wavelet transform and on the dictionary composed of curvelets and an undecimated wavelet transform.
去噪泊松图像最近在天文学和生物成像等多个领域成为越来越多研究的主题。在本文中,我们专注于共聚焦显微镜,这是一种非常流行的三维生物活样本成像技术,尽管受到模糊和泊松噪声的影响,但它仍能提供非常好的分辨率(几百纳米)。反卷积方法已被提出用于减少这些退化,在本文中,我们专注于促进在解中引入显式先验的技术。这些技术的一个难点是设置参数值,该值权衡数据项和正则化项之间的权衡。只有少数工作致力于研究在考虑泊松噪声时自动选择这个正则化参数;因此,它通常是手动设置的,以获得最佳的视觉效果。我们在这里提出了两种最近的方法来估计这个正则化参数,我们首先提出了一种改进这些估计器的方法,该方法利用了共聚焦图像。在这些估计器之后,我们其次提出将泊松噪声图像的反卷积问题表示为最小化新的约束问题。所提出的约束形式非常适合这个应用领域,因为它是直接使用泊松分布的反对数似然来表示的,因此不需要任何近似。我们展示了如何使用最近的交替方向技术来解决无约束和约束问题,并使用众所周知的先验,如全变差和小波变换,展示了在合成和真实数据上的结果。在这些小波变换中,我们特别关注双树复小波变换和由曲线波和非抽样小波变换组成的字典。