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Multiscale Bi-Gaussian Filter for Adjacent Curvilinear Structures Detection With Application to Vasculature Images

机译:多尺度双高斯滤波器在曲线结构邻域检测中的应用

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The intensity or gray-level derivatives have been widely used in image segmentation and enhancement. Conventional derivative filters often suffer from an undesired merging of adjacent objects because of their intrinsic usage of an inappropriately broad Gaussian kernel; as a result, neighboring structures cannot be properly resolved. To avoid this problem, we propose to replace the low-level Gaussian kernel with a bi-Gaussian function, which allows independent selection of scales in the foreground and background. By selecting a narrow neighborhood for the background with regard to the foreground, the proposed method will reduce interference from adjacent objects simultaneously preserving the ability of intraregion smoothing. Our idea is inspired by a comparative analysis of existing line filters, in which several traditional methods, including the vesselness, gradient flux, and medialness models, are integrated into a uniform framework. The comparison subsequently aids in understanding the principles of different filtering kernels, which is also a contribution of this paper. Based on some axiomatic scale-space assumptions, the full representation of our bi-Gaussian kernel is deduced. The popular $gamma$-normalization scheme for multiscale integration is extended to the bi-Gaussian operators. Finally, combined with a parameter-free shape estimation scheme, a derivative filter is developed for the typical applications of curvilinear structure detection and vasculature image enhancement. It is verified in experiments using synthetic and real data that the proposed method outperforms several conventional filters in separating closely located objects and being robust to noise.
机译:强度或灰度导数已广泛用于图像分割和增强。常规的导数滤波器常常由于不适当地使用宽泛的高斯核而固有地合并了相邻对象,这是不希望的。结果,相邻结构无法正确解析。为避免此问题,我们建议用双高斯函数代替低级高斯核,该函数允许在前景和背景中独立选择比例尺。通过为前景选择一个较窄的背景邻域,该方法将减少相邻对象的干扰,同时保留区域内平滑的能力。我们的想法是通过对现有线路滤波器的比较分析启发而来的,在该分析中,将几种传统方法(包括容器度,梯度通量和中间度模型)集成到一个统一的框架中。随后的比较有助于理解不同过滤内核的原理,这也是本文的贡献。基于一些公理化的比例空间假设,推导了我们的双高斯核的完整表示。用于多尺度积分的流行的 $ gamma $ -归一化方案已扩展到双高斯算子。最后,结合无参数形状估计方案,针对曲线结构检测和脉管图像增强的典型应用开发了导数滤波器。在使用合成数据和真实数据进行的实验中证明,该方法在分离位置较近的物体方面具有优于几种常规滤波器的性能,并且对噪声具有鲁棒性。

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