Abstract

Segmentation of intensity inhomogeneous regions is a well-known problem in image analysis applications. This paper presents a region-based active contour method for image segmentation, which properly works in the context of intensity inhomogeneity problem. The proposed region-based active contour method embeds both region and gradient information unlike traditional methods. It contains mainly two terms, area and length, in which the area term practices a new region-based signed pressure force (SPF) function, which utilizes mean values from a certain neighborhood using the local binary fitted (LBF) energy model. In turn, the length term uses gradient information. The novelty of our method is to locally compute new SPF function, which uses local mean values and is able to detect boundaries of the homogenous regions. Finally, a truncated Gaussian kernel is used to regularize the level set function, which not only regularizes it but also removes the need of computationally expensive reinitialization. The proposed method targets the segmentation problem of intensity inhomogeneous images and reduces the time complexity among locally computed active contour methods. The experimental results show that the proposed method yields better segmentation result as well as less time complexity compared with the state-of-the-art active contour methods.

Highlights

  • Image segmentation is a fundamental problem in the areas of computer vision and image processing

  • Some of the common techniques used for image segmentation are thresholding based segmentation, segmentation based on image classification, and edge based and region based image segmentation

  • It is implemented by replacing the edge indicator function in the area term of the edge-based level set method [3] with a new regionbased signed pressure force (SPF) function that utilizes the image local information obtained using the local binary fitted (LBF) energy model

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Summary

Introduction

Image segmentation is a fundamental problem in the areas of computer vision and image processing. The proposed region based active contour model utilizes both edge and region information to segment an image into nonoverlapping region It is implemented by replacing the edge indicator function in the area term of the edge-based level set method [3] with a new regionbased signed pressure force (SPF) function that utilizes the image local information obtained using the local binary fitted (LBF) energy model. The zero level curve C is driven into a smooth curve from a complicated curve to minimize the function Lg(φ) which utilizes edge information in regularization process, while Aspf(φ) contains the locally computed image intensity information which derives the contour to the weak and blur edges by distinguishing inhomogeneous regions.

Locally Computed SPF Function
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