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Graphics Processing Unit (GPU) implementation of image processing algorithms to improve system performance of the Control Acquisition Processing and Image Display System (CAPIDS) of the Micro-Angiographic Fluoroscope (MAF)

机译:图形处理单元(GpU)执行的图像处理算法以改善控制采集处理的系统的性能以及微造影荧光镜的图像显示系统(CapIDs)(maF)

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摘要

We present the image processing upgrades implemented on a Graphics Processing Unit (GPU) in the Control, Acquisition, Processing, and Image Display System (CAPIDS) for the custom Micro-Angiographic Fluoroscope (MAF) detector. Most of the image processing currently implemented in the CAPIDS system is pixel independent; that is, the operation on each pixel is the same and the operation on one does not depend upon the result from the operation on the other, allowing the entire image to be processed in parallel. GPU hardware was developed for this kind of massive parallel processing implementation. Thus for an algorithm which has a high amount of parallelism, a GPU implementation is much faster than a CPU implementation. The image processing algorithm upgrades implemented on the CAPIDS system include flat field correction, temporal filtering, image subtraction, roadmap mask generation and display window and leveling. A comparison between the previous and the upgraded version of CAPIDS has been presented, to demonstrate how the improvement is achieved. By performing the image processing on a GPU, significant improvements (with respect to timing or frame rate) have been achieved, including stable operation of the system at 30 fps during a fluoroscopy run, a DSA run, a roadmap procedure and automatic image windowing and leveling during each frame.
机译:我们在用于定制微血管造影荧光镜(MAF)检测器的控制,采集,处理和图像显示系统(CAPID)中,在图形处理单元(GPU)上实现了在图形处理单元(GPU)上实现的图像处理升级。目前在Capids系统中实现的大多数图像处理是独立于像素;也就是说,每个像素上的操作是相同的,并且对其上的操作不依赖于另一个操作的结果,允许并行处理整个图像。 GPU硬件是为这种大规模的并行处理实现而开发的。因此,对于具有大量并行性的算法,GPU实现比CPU实现快得多。在Capids系统上实现的图像处理算法升级包括平面校正,时间滤波,图像减法,路线图屏蔽生成和显示窗口和液化。已经提出了先前和升级版本的Capids版本的比较,以证明如何实现改进。通过对GPU进行图像处理,已经实现了显着的改进(相对于定时或帧速率),包括在透视运行期间在30 fps下稳定运行,DSA运行,路线图和自动图像窗口和自动图像窗口每个帧的调平。

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