首页> 外文会议>Medical image computing and computer-assisted interventions conference;International workshop on augmented environments for computer-assisted interventions >Graphics Processor Unit (GPU) Accelerated Shallow Transparent Layer Detection in Optical Coherence Tomographic (OCT) Images for Real-Time Corneal Surgical Guidance
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Graphics Processor Unit (GPU) Accelerated Shallow Transparent Layer Detection in Optical Coherence Tomographic (OCT) Images for Real-Time Corneal Surgical Guidance

机译:用于实时角膜手术指导的光学相干断层扫描(OCT)图像中的图形处理器单元(GPU)加速浅层透明层检测

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An image analysis algorithm is described that utilizes a Graphics Processor Unit (GPU) to detect in real-time the most shallow subsurface tissue layer present in an OCT image obtained by a prototype SDOCT corneal imaging system. The system has a scanning depth range of 6mm and can acquire 15 volumes per second at the cost of lower resolution and signal-to-noise ratio (SNR) than diagnostic OCT scanners. To the best of our knowledge, we are the first to experiment with non-median percentile filtering for simultaneous noise reduction and feature enhancement in OCT images, and we believe we are the first to implement any form of non-median percentile filtering on a GPU. The algorithm was applied to five different test images. On an average, it took ~0.5 milliseconds to preprocess an image with a 20th-percentile filter, and ~1.7 milliseconds for our second-stage algorithm to detect the faintly imaged transparent surface.
机译:描述了一种图像分析算法,该算法利用图形处理器单元(GPU)实时检测由原型SDOCT角膜成像系统获得的OCT图像中存在的最浅的地下组织层。该系统的扫描深度范围为6mm,每秒可获取15卷,但其分辨率和信噪比(SNR)低于诊断OCT扫描仪。据我们所知,我们是第一个使用非中位数百分位数滤波技术进行实验同时降低OCT图像中的噪声和增强特征的方法,并且我们相信我们是第一个在GPU上实现任何形式的非中位数百分位数滤波的公司。该算法已应用于五张不同的测试图像。平均而言,使用20%的滤波器对图像进行预处理大约需要0.5毫秒,而对于我们的第二阶段算法来说,检测出微弱成像的透明表面大约需要1.7毫秒。

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