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首页> 外文期刊>Journal of Real-Time Image Processing >Kernel design for real-time denoising implementation in low-resolution images
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Kernel design for real-time denoising implementation in low-resolution images

机译:低分辨率图像中实时降噪实现的内核设计

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摘要

Upsampling and removing noise from digital images are important tasks in image processing. Single-image upsampling with denoising influences the quality of the resulting images. Image upsampling is known as superresolution, which refers to restoration of a higher-resolution image from a given low-resolution image. In this paper, we propose a filter-based image upsampling and denoising method for low-resolution images. The proposed method involves two stages. In the first stage, we design least squares method-based filters. In the second stage, we implement an image upsampling and denoising process. The proposed method is compared with several standard benchmark methods, including the nearest neighbor, bilinear, and bicubic methods, to test whether it yields better restoration quality and computational advantages. In addition, we design various-sized filters and test them on low-resolution noisy images. From the experimental results, we conclude that filters with more taps return better results, but longer computational running times. The quality of the image upsampling and denoising of the tested methods is compared subjectively and objectively through simulation. The simulation results suggest how the user can best select an appropriate filter size to achieve optimal trade-off results.
机译:数字图像的升采样和消除噪声是图像处理中的重要任务。具有降噪功能的单图像上采样会影响最终图像的质量。图像上采样被称为超分辨率,它是指从给定的低分辨率图像恢复高分辨率图像。本文提出了一种基于滤波器的低分辨率图像上采样和去噪方法。所提出的方法包括两个阶段。在第一阶段,我们设计基于最小二乘法的滤波器。在第二阶段,我们执行图像上采样和去噪过程。将该方法与几种标准基准方法(包括最近邻方法,双线性方法和双三次方法)进行了比较,以测试该方法是否产生更好的恢复质量和计算优势。此外,我们设计了各种尺寸的滤镜,并在低分辨率的噪点图像上对其进行了测试。从实验结果可以得出结论,具有更多抽头的过滤器可返回更好的结果,但计算运行时间更长。通过模拟对主观和客观地比较了所测试方法的图像上采样和去噪的质量。仿真结果表明用户如何最好地选择合适的滤波器尺寸以获得最佳的权衡结果。

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