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Parallel implementation of wavelet-based image denoising on programmable PC-grade graphics hardware

机译:在可编程PC级图形硬件上并行实现基于小波的图像去噪

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The discrete wavelet transform (DWT) has been extensively used for image compression and denoising in the areas of image processing and computer vision. However, the intensive computation of DWT due to its inherent multilevel data decomposition and reconstruction operations brings a bottleneck that drastically reduces its performance and implementations for real-time applications when facing large size digital images and/or high-definition videos. Although various software-based acceleration solutions, such as the lifting scheme, have been devised and achieved a higher performance in general, the pure software accelerated DWT still struggle to cope with the demands from real-time and interactive applications. With the growing capacity and popularity of graphics hardware, personal computers (PCs) nowadays are often equipped with programmable graphics processing units (GPUs) for graphics acceleration. The GPU offers a cost-effective parallel data processing mechanism for operations on large amount of data, even for applications beyond graphics. This practice is commonly referred as general-purpose computing on GPU (GPGPU). This paper presented a GPGPU framework with the corresponding parallel computing solution for wavelet-based image denoising by using off-the-shelf consumer-grade programmable GPUs. This framework can be readily incorporated with different forms of DWT by customizing the parameter of the wavelet kernel. Experiment results show that the framework gains applicability in data parallelism and satisfaction performance in accelerating computations for wavelet-based denoising.
机译:离散小波变换(DWT)已在图像处理和计算机视觉领域广泛用于图像压缩和去噪。但是,由于DWT固有的多级数据分解和重建操作,DWT的密集计算带来了一个瓶颈,当面对大尺寸数字图像和/或高清视频时,该瓶颈会大大降低其性能和实时应用程序的实现。尽管已经设计了各种基于软件的加速解决方案(例如提升方案)并总体上获得了更高的性能,但是纯软件加速的DWT仍然难以满足实时和交互式应用程序的需求。随着图形硬件的容量不断增长和普及,当今的个人计算机(PC)通常配备有可编程的图形处理单元(GPU)来进行图形加速。 GPU提供了一种经济高效的并行数据处理机制,可用于处理大量数据,甚至适用于图形以外的应用。这种做法通常称为GPU上的通用计算(GPGPU)。本文提出了一种GPGPU框架以及相应的并行计算解决方案,该解决方案通过使用现成的消费级可编程GPU来实现基于小波的图像去噪。通过定制小波内核的参数,可以将该框架轻松地与DWT的不同形式合并。实验结果表明,该框架在加速基于小波去噪的计算中,在数据并行度和满意度方面具有适用性。

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