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Phase congruency eigendecomposition for multi-scale neuronal enhancement

机译:相一致特征分解用于多尺度神经元增强

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In this paper, we present an algorithm for enhancing neuronal structure from 3D Confocal Microscopy Images. Our algorithm computes a multi-scale phase congruency value at every pixel from a 3D image, which assigns values that indicate the presence of image features such as edges and lines. The phase congruency of a 3D image is calculated by carefully combining the convolutions of the image with a quadrature filter bank, so we leverage this information to supplement phase features. We analyse the outputs of the quadrature filter bank to enhance neuronal structure. We compare our method with the Hessian based enhancement of neuronal structure to demonstrate the advantages/efficacy of our algorithm.
机译:在本文中,我们提出了一种从3D共聚焦显微镜图像增强神经元结构的算法。我们的算法会计算3D图像中每个像素的多尺度相位一致性值,该值会分配表示图像特征(例如边缘和线条)存在的值。通过将图像的卷积与正交滤波器组仔细组合来计算3D图像的相位一致性,因此我们利用此信息来补充相位特征。我们分析正交滤波器组的输出以增强神经元结构。我们将我们的方法与基于Hessian的神经元结构增强进行了比较,以证明我们算法的优势/功效。

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