Mondal Partha P, Rajan K, Ahmad Imteyaz
Department of Physics, Indian Institute of Science, Bangalore 560012, India.
J Opt Soc Am A Opt Image Sci Vis. 2006 Jul;23(7):1678-86. doi: 10.1364/josaa.23.001678.
Image filtering techniques have numerous potential applications in biomedical imaging and image processing. The design of filters largely depends on the a priori, knowledge about the type of noise corrupting the image. This makes the standard filters application specific. Widely used filters such as average, Gaussian, and Wiener reduce noisy artifacts by smoothing. However, this operation normally results in smoothing of the edges as well. On the other hand, sharpening filters enhance the high-frequency details, making the image nonsmooth. An integrated general approach to design a finite impulse response filter based on Hebbian learning is proposed for optimal image filtering. This algorithm exploits the interpixel correlation by updating the filter coefficients using Hebbian learning. The algorithm is made iterative for achieving efficient learning from the neighborhood pixels. This algorithm performs optimal smoothing of the noisy image by preserving high-frequency as well as low-frequency features. Evaluation results show that the proposed finite impulse response filter is robust under various noise distributions such as Gaussian noise, salt-and-pepper noise, and speckle noise. Furthermore, the proposed approach does not require any a priori knowledge about the type of noise. The number of unknown parameters is few, and most of these parameters are adaptively obtained from the processed image. The proposed filter is successfully applied for image reconstruction in a positron emission tomography imaging modality. The images reconstructed by the proposed algorithm are found to be superior in quality compared with those reconstructed by existing PET image reconstruction methodologies.
图像滤波技术在生物医学成像和图像处理中具有众多潜在应用。滤波器的设计很大程度上取决于关于破坏图像的噪声类型的先验知识。这使得标准滤波器具有特定的应用场景。诸如均值、高斯和维纳等广泛使用的滤波器通过平滑来减少噪声伪影。然而,这种操作通常也会导致边缘平滑。另一方面,锐化滤波器增强高频细节,使图像变得不光滑。本文提出了一种基于赫布学习设计有限脉冲响应滤波器的综合通用方法,用于优化图像滤波。该算法通过使用赫布学习更新滤波器系数来利用像素间的相关性。该算法通过迭代实现从邻域像素进行有效学习。该算法通过保留高频和低频特征对噪声图像进行最优平滑。评估结果表明,所提出的有限脉冲响应滤波器在高斯噪声、椒盐噪声和斑点噪声等各种噪声分布下具有鲁棒性。此外,所提出的方法不需要关于噪声类型的任何先验知识。未知参数数量少,并且这些参数中的大多数是从处理后的图像中自适应获得的。所提出的滤波器成功应用于正电子发射断层成像模态的图像重建。与现有正电子发射断层成像图像重建方法重建的图像相比,所提出算法重建的图像质量更优。