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Fast retinal vessel analysis

机译:快速视网膜血管分析

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摘要

We introduce a fast image processing system that allows to analyse digital data-bases of retinal images in a short time, and to process the image in situ while the patient is examined. While it achieves a comparable quality as state-of-the-art methods, it differs from most of them by the fact that it is extremely fast. Retinal blood vessels are enhanced via convolution with the second derivative of the local Radon kernel. It is rotated by different angles, and it adapts itself via a maximisation procedure to the vessel directions. We combine smoothing along vessel directions with contrast enhancement across them. We detect vessels as connected structures with very few interruptions. A subsequent skeletonisation allows a higher-level description of the vessel tree. To end up with a very fast system, we combine efficient algorithms for numerical integration, differentiation and interpolation, and we propose an automatic parameter selection strategy. Our convolution kernels are precomputed and stored into cached constant memory. All essential subroutines are intrinsically parallel, and the resulting system is implemented on GPUs using CUDA. Our qualitative evaluations with the DRIVE database and our own database show that the system achieves competitive performance. It is possible to process images of size 4, 288 9 2, 848 pixels in 1.2 s on an NVIDIA Geforce GTX680. Compared to our sequential implementation, this amounts to a speed-up by two orders of magnitude.
机译:我们引入了一种快速的图像处理系统,该系统可以在短时间内分析视网膜图像的数字数据库,并在检查患者的同时就地处理图像。尽管它可以达到与最先进方法相当的质量,但它与大多数方法的不同之处在于它非常快。视网膜血管通过与局部Radon核的二阶导数卷积而增强。它旋转了不同的角度,并通过最大化的过程适应了船只的方向。我们将沿血管方向的平滑与跨它们的对比度增强相结合。我们检测到的船只是几乎没有中断的连接结构。随后的骨架化可以对血管树进行更高级的描述。为了建立一个非常快速的系统,我们结合了用于数值积分,微分和插值的高效算法,并提出了一种自动参数选择策略。我们的卷积内核已预先计算并存储到缓存的常量内存中。所有基本子例程本质上都是并行的,并且所生成的系统使用CUDA在GPU上实现。我们对DRIVE数据库和我们自己的数据库进行的定性评估表明,该系统具有竞争优势。在NVIDIA Geforce GTX680上,可以在1.2 s内处理大小为4、288、9、2、848像素的图像。与我们的顺序执行相比,这可以将速度提高两个数量级。

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