首页> 外文会议>IEEE International Symposium on Biomedical Imaging >DYNAMIC LOCAL TRACING FOR 3D AXON CURVILINEAR STRUCTURE DETECTION FROM MICROSCOPIC IMAGE STACK
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DYNAMIC LOCAL TRACING FOR 3D AXON CURVILINEAR STRUCTURE DETECTION FROM MICROSCOPIC IMAGE STACK

机译:微观图像堆栈3D轴颈曲线结构检测的动态局部跟踪

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To study the morphologic structure of axons can help neuroscientists understand the neuronal function and development. The modern microscopes provide the fundamental tool for visual inspection of axonal structure. Due to the high volume of generated microscopic axon image data, it is critical to develop an automated technique for robustly and rapidly detecting 3D axonal structure. In this paper, we present a pure 3D approach to extract the curvilinear structure of axonal axes from microscopic image stacks. The method mimics the axon tracing procedure in 3D space as walking along a path with minimized cost value, which corresponds to the shortest path problem (SPP) in graph theory. The global solution for SPP, such as Dijkstra's algorithm, is infeasible for the real axon tracing problem because of the computation cost. We simplify this problem using a dynamic local tracing technique with linear computation complexity. The merits of the proposed method lie in that it can handle the short turn and non-vertical problems and also can separate closely distributed axons from each other.
机译:为研究轴突的形态结构可以帮助神经科学家了解神经元功能和发展。现代显微镜提供了用于轴突结构的目视检查的基本工具。由于产生的显微镜轴突图像数据量大,对于强大而快速地检测3D轴突结构,开发自动技术至关重要。在本文中,我们提出了一种纯3D方法来提取来自微观图像堆叠的轴轴轴的曲线结构。该方法模仿3D空间中的轴突跟踪过程,如沿着具有最小化成本值的路径行走,这对应于图形理论中的最短路径问题(SPP)。由于计算成本,SPP的全局SPP解决方案(如Dijkstra算法)是不可行的。我们使用具有线性计算复杂性的动态本地跟踪技术简化了此问题。所提出的方法的优点在于它可以处理短转弯和非垂直问题,并且还可以将密切分布的轴突彼此分开。

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