Using Adaboost on contourlet based image deblurring for Fluid Lens Camera Systems

Jack Tzeng, Y. Freund, Truong Nguyen
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引用次数: 1

Abstract

The Fluidic Lens Camera System provides an exciting opportunity for the Image Processing Community. Designed for a surgical environment, this camera has higher magnification and has better portability than traditional laparoscopic cameras. From an image processing prospective, the fluid causes non-uniform blur of different color planes. While the green image is sharp, the red and blue images are blurred. Previous methods have been developed to separate out the edge and shading components of the green image and to use the edge information in green to replace the blurred blue edges. This algorithm succeed in most areas, however in some areas, color bleeding artifacts occurred. We restate this problem as a classification problem. Using the contourlet and wavelet coefficients as features, the proposed algorithm determines in what areas color bleeding will occur and does not apply the sharpening algorithm in these areas. By applying the previous contourlet method in areas where it succeeds, we can produce an overall sharper image with reduced color bleeding artifacts. The ability to correctly classify when the previous algorithm will succeed is crucial to the success of the algorithm. The principal application is medical imaging, however, the fields of satellite pan-sharpening and image denoising can benefit from the results found in this paper.
流体透镜摄像系统为图像处理界提供了一个令人兴奋的机会。该相机专为外科手术环境设计,比传统的腹腔镜相机具有更高的放大倍率和更好的便携性。从图像处理的角度来看,流体会导致不同颜色平面的不均匀模糊。而绿色的图像是清晰的,红色和蓝色的图像是模糊的。以前的方法已经开发出来的边缘和阴影成分的绿色图像,并使用绿色的边缘信息来代替模糊的蓝色边缘。该算法在大多数区域取得了成功,但在某些区域出现了颜色出血伪影。我们重申这个问题是一个分类问题。该算法以contourlet和小波系数为特征,确定在哪些区域会发生颜色出血,并且在这些区域不应用锐化算法。通过在成功的区域应用前面的轮廓方法,我们可以产生一个整体更清晰的图像,减少了颜色出血的伪影。当前一种算法成功时,正确分类的能力对算法的成功至关重要。该方法的主要应用领域是医学成像,但也可应用于卫星泛锐化和图像去噪等领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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