Department of Physics, Heriot-Watt University, Edinburgh EH14 4AS, UK.
J Struct Biol. 2010 Dec;172(3):233-43. doi: 10.1016/j.jsb.2010.06.019. Epub 2010 Jul 3.
Fluorescence imaging of dynamical processes in live cells often results in a low signal-to-noise ratio. We present a novel feature-preserving non-local means approach to denoise such images to improve feature recovery and particle detection. The commonly used non-local means filter is not optimal for noisy biological images containing small features of interest because image noise prevents accurate determination of the correct coefficients for averaging, leading to over-smoothing and other artifacts. Our adaptive method addresses this problem by constructing a particle feature probability image, which is based on Haar-like feature extraction. The particle probability image is then used to improve the estimation of the correct coefficients for averaging. We show that this filter achieves higher peak signal-to-noise ratio in denoised images and has a greater capability in identifying weak particles when applied to synthetic data. We have applied this approach to live-cell images resulting in enhanced detection of end-binding-protein 1 foci on dynamically extending microtubules in photo-sensitive Drosophila tissues. We show that our feature-preserving non-local means filter can reduce the threshold of imaging conditions required to obtain meaningful data.
荧光成像的动态过程在活细胞中经常会导致一个低的信噪比。我们提出了一种新的特征保持非局部均值方法来对图像进行去噪,以提高特征恢复和粒子检测。常用的非局部均值滤波器对于含有小特征的噪声生物图像不是最优的,因为图像噪声会阻止正确的平均系数的准确确定,导致过度平滑和其他伪影。我们的自适应方法通过构建基于 Haar 特征提取的粒子特征概率图像来解决这个问题。然后,使用粒子概率图像来改进平均的正确系数的估计。我们表明,该滤波器在去噪图像中实现了更高的峰值信噪比,并且在应用于合成数据时具有更强的识别弱粒子的能力。我们已经将这种方法应用于活细胞图像,从而增强了对光敏感的果蝇组织中动态延伸的微管上末端结合蛋白 1 焦点的检测。我们表明,我们的特征保持非局部均值滤波器可以降低获得有意义数据所需的成像条件的阈值。