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Enhanced Image Reconstruction From Quarter Sampling Measurements Using An Adapted Very Deep Super Resolution Network

机译:使用自适应的超深超分辨率网络从四分之一采样测量中增强图像重建

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Quarter sampling is a novel sensor concept that enables the acquisition of higher resolution images without increasing the number of pixels. This is achieved by covering three quarters of each pixel of a low-resolution sensor such that only one quadrant of the sensor area of each pixel is sensitive to light. By randomly masking different parts, effectively a non-regular sampling of a higher resolution image is performed. Combining a properly designed mask and a high-quality reconstruction algorithm, a higher image quality can be achieved than using a low-resolution sensor and subsequent upsampling. For the latter case, the image quality can be enhanced using super resolution algorithms. Recently, algorithms based on machine learning such as the Very Deep Super Resolution network (VDSR) proofed to be successful for this task. In this work, we transfer the concepts of VDSR to the special case of quarter sampling. Besides adapting the network layout to take advantage of the case of quarter sampling, we introduce a novel data augmentation technique enabled by quarter sampling. Altogether, using the quarter sampling sensor, the image quality in terms of PSNR can be increased by + 0.67 dB for the Urban 100 dataset compared to using a low-resolution sensor with VDSR.
机译:四分之一采样是一种新颖的传感器概念,可在不增加像素数量的情况下获取更高分辨率的图像。这可以通过覆盖低分辨率传感器的每个像素的四分之三来实现,这样每个像素的传感器区域中只有一个象限对光敏感。通过随机遮罩不同的部分,可以有效地执行高分辨率图像的非常规采样。结合适当设计的遮罩和高质量的重建算法,与使用低分辨率传感器和后续的上采样相比,可以实现更高的图像质量。对于后一种情况,可以使用超分辨率算法提高图像质量。最近,事实证明,基于机器学习的算法(例如超深度超高分辨率网络(VDSR))可以成功完成此任务。在这项工作中,我们将VDSR的概念转移到四分之一采样的特殊情况下。除了调整网络布局以利用四分之一采样的情况外,我们还引入了一种新的数据增强技术,该技术可通过四分之一采样来实现。总体而言,使用四分之一采样传感器,与使用带有VDSR的低分辨率传感器相比,Urban 100数据集的PSNR图像质量可以提高+ 0.67 dB。

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