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Steerable Features for Statistical 3D Dendrite Detection

机译:统计3D树突检测的可操纵功能

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Most state-of-the-art algorithms for filament detection in 3-D image-stacks rely on computing the Hessian matrix around individual pixels and labeling these pixels according to its eigenvalues. This approach, while very effective for clean data in which linear structures are nearly cylindrical, loses its effectiveness in the presence of noisy data and irregular structures.In this paper, we show that using steerable filters to create rotationally invariant features that include higher-order derivatives and training a classifier based on these features lets us handle such irregular structures. This can be done reliably and at acceptable computational cost and yields better results than state-of-the-art methods.
机译:在3D图像堆栈中进行细丝检测的大多数最新算法都依赖于计算单个像素周围的Hessian矩阵,并根据其特征值标记这些像素。这种方法虽然对于线性结构几乎为圆柱形的干净数据非常有效,但在存在嘈杂数据和不规则结构的情况下失去了有效性。 在本文中,我们证明了使用可控滤波器创建包括高阶导数的旋转不变特征,并基于这些特征训练分类器可以使我们处理此类不规则结构。与最新方法相比,这可以可靠地完成并以可接受的计算成本完成,并产生更好的结果。

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