Sigmoid gradient vector flow for medical image segmentation

ICSP), 2012 IEEE 11th International Conference(2012)

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摘要
Active contour model has a good performance in consecutive boundary extraction for medical images. The gradient vector flow (GVF) field is one of the most popular external forces that can increase the capture range and converge to concavities, although it is sensitive to image noise and easy to leak in weak edge. Here we propose a novel sigmoid gradient vector flow (SGVF) force model for improving contour performance. This novel external force field is insensitive to noises and may prevent the weak edge leakage. To further illustrate the advantages associated with the proposed GVF field formulation, synthetic images and real images are conducted when the proposed method is applied in ultrasound image and magnetic resonance image for suppressing noise and extracting the weak edges. Experimental results demonstrate that the proposed method leads to more accurate segmentation.
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关键词
edge detection,image denoising,image segmentation,medical image processing,vectors,gvf field formulation,sgvf force model,active contour model,consecutive boundary extraction,contour performance,external force field,image noise,magnetic resonance image,medical image segmentation,noise suppression,sigmoid gradient vector flow,sigmoid gradient vector flow force model,synthetic images,ultrasound image,weak edge extraction,weak edge leakage,active contour,gradient vector flow,sigmoid function
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