POCS-based super-resolution for HD endoscopy video frames

M. Häfner, M. Liedlgruber, A. Uhl
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引用次数: 12

Abstract

The main question we try to answer in this work is whether it is feasible to employ super-resolution (SR) algorithms to increase the spatial resolution of endoscopic high-definition (HD) images in order to reveal new details which may have got lost due to the limited endoscope magnification inherent to the HD endoscope used (e.g. mucosal structures). For this purpose we propose a SR algorithm, which is based on the Projection onto convex sets (POCS) approach. This algorithm is able to avoid over-sharpening, which is often seen with other methods. Since POCS-based approaches are iterative ones, we also propose an adaptive iteration scheme. We compare the quality of the reconstruction of our method against the quality achieved by other SR methods. This is done on standard test images as well as on images obtained from endoscopic video frames. We show that, while our approach produces competitive results on standard test images, we are not able to reveal new details in endoscopic images for various reasons.
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基于pocs的高清内窥镜视频帧的超分辨率
我们在这项工作中试图回答的主要问题是,是否可行采用超分辨率(SR)算法来提高内窥镜高清(HD)图像的空间分辨率,以揭示由于所使用的高清内窥镜固有的有限放大而可能丢失的新细节(例如粘膜结构)。为此,我们提出了一种基于凸集投影(POCS)方法的SR算法。该算法能够避免其他方法经常出现的过度锐化。由于基于pocs的方法是迭代的,我们还提出了一种自适应迭代方案。我们将本方法的重建质量与其他SR方法的重建质量进行了比较。这是在标准测试图像以及从内窥镜视频帧获得的图像上完成的。我们表明,虽然我们的方法在标准测试图像上产生了具有竞争力的结果,但由于各种原因,我们无法揭示内窥镜图像中的新细节。
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3.10
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