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Active Contour External Force Using Vector Field Convolution for Image Segmentation

机译:使用矢量场卷积的主动轮廓外力进行图像分割

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摘要

Snakes, or active contours, have been widely used in image processing applications. Typical roadblocks to consistent performance include limited capture range, noise sensitivity, and poor convergence to concavities. This paper proposes a new external force for active contours, called vector field convolution (VFC), to address these problems. VFC is calculated by convolving the edge map generated from the image with the user-defined vector field kernel. We propose two structures for the magnitude function of the vector field kernel, and we provide an analytical method to estimate the parameter of the magnitude function. Mixed VFC is introduced to alleviate the possible leakage problem caused by choosing inappropriate parameters. We also demonstrate that the standard external force and the gradient vector flow (GVF) external force are special cases of VFC in certain scenarios. Examples and comparisons with GVF are presented in this paper to show the advantages of this innovation, including superior noise robustness, reduced computational cost, and the flexibility of tailoring the force field.
机译:蛇或活动轮廓已广泛用于图像处理应用程序中。达到一致性能的典型障碍包括捕获范围有限,噪声敏感度和凹形收敛性差。本文提出了一种用于活动轮廓的新外力,称为矢量场卷积(VFC),以解决这些问题。通过将从图像生成的边缘图与用户定义的矢量场内核进行卷积来计算VFC。我们为矢量场核的量纲函数提出了两种结构,并提供了一种估计量纲函数参数的分析方法。引入混合VFC以减轻因选择不合适的参数而引起的可能的泄漏问题。我们还证明了在某些情况下标准外力和梯度矢量流(GVF)外力是VFC的特殊情况。本文提供了与GVF的示例和比较,以显示该创新的优势,包括卓越的噪声鲁棒性,降低的计算成本以及调整力场的灵活性。

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