Abstract

By using local and global image information, a novel active contour method based on the p-Laplace equation for image segmentation is proposed in this paper. The force term in the evolution equation incorporates global, local and edge information of the image. The global and local terms drag the contour towards object boundaries precisely and take care of the contour movement when it is away from the object. Meanwhile, the integration of edge stopping function in this force term ensures the stoppage of contour at object boundaries to avoid boundary leakage problem. The variable exponent p-Laplace energy is used for smoothness of the level set to detect the exact object boundaries in the presence of complex topological changes and deep depression. Finally, the adaptive force and p-Laplace energy term are jointly integrated into a level set by using a simple finite difference scheme to build the final evolution equation for the method. The proposed method has strong capability to accurately segment the images having noise, intensity inhomogeneity, and complex object boundaries. Moreover, the proposed method overcomes the problem arise from contour initialization as the evolution of contour is independent of the initialization of level set function. Experimental results on synthetic, real and medical images along with two publicly available databases validate the robustness and effectiveness of the proposed method.

Highlights

  • B oundary detection and image segmentation are very basic problems and have a significant effect in the fields of computer vision and image processing [1]

  • The evolution of contour is controlled by a force term, p-Laplace term, and a regularization term

  • The p-Laplace force is used to keep the evolution of contour smooth for noisy images

Read more

Summary

INTRODUCTION

B oundary detection and image segmentation are very basic problems and have a significant effect in the fields of computer vision and image processing [1]. Chenchung and Li [9] modified Bin Zhous work [28] by inserting Chan-Vese model with p-Laplace energy to form a level set equation This model works accurately for the images having noise and blurred boundaries but unable to segment the inhomogeneous images. Oh et al [17] has formulated a hybrid method by incorporating edge information into a region based energy function This method uses the Chan-Vese model [22] and coupled it with geodesic edge term taken from GAC model [20] and accomplish results on medical images. Motivated by these previous works, we propose a novel adaptive active contour method in partial differential equation (PDE) formulation.

BACKGROUND
WANG AND HE MODEL
QUANTITATIVE ANALYSIS
CONCLUSION
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call