A Variational Level Set Approach to Segmentation and Bias Correction of Images with Intensity Inhomogeneity
Chunming Li1
, Rui Huang2, Zhaohua Ding1, Chris Gatenby1, Dimitris Metaxas2 and John Gore1
| (1) |
Vanderbilt University Institute of Imaging Science, USA |
| (2) |
Department of Computer Science, Rutgers University, USA |
Abstract
This paper presents a variational level set approach to joint segmentation and bias correction of images with intensity inhomogeneity.
Our method is based on an observation that intensities in a relatively small local region are separable, despite of the inseparability
of the intensities in the whole image caused by the intensity inhomogeneity. We first define a weighted K-means clustering
objective function for image intensities in a neighborhood around each point, with the cluster centers having a multiplicative
factor that estimates the bias within the neighborhood. The objective function is then integrated over the entire domain and
incorporated into a variational level set formulation. The energy minimization is performed via a level set evolution process.
Our method is able to estimate bias of quite general profiles. Moreover, it is robust to initialization, and therefore allows
automatic applications. The proposed method has been used for images of various modalities with promising results.
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