Title :
A Robust Hidden Markov Gauss Mixture Vector Quantizer for a Noisy Source
Author :
Kyungsuk Pyun ; Lim, J. ; Gray, R.M.
Author_Institution :
IPG, Hewlett-Packard Co., San Diego, CA
fDate :
7/1/2009 12:00:00 AM
Abstract :
Noise is ubiquitous in real life and changes image acquisition, communication, and processing characteristics in an uncontrolled manner. Gaussian noise and Salt and Pepper noise, in particular, are prevalent in noisy communication channels, camera and scanner sensors, and medical MRI images. It is not unusual for highly sophisticated image processing algorithms developed for clean images to malfunction when used on noisy images. For example, hidden Markov Gauss mixture models (HMGMM) have been shown to perform well in image segmentation applications, but they are quite sensitive to image noise. We propose a modified HMGMM procedure specifically designed to improve performance in the presence of noise. The key feature of the proposed procedure is the adjustment of covariance matrices in Gauss mixture vector quantizer codebooks to minimize an overall minimum discrimination information distortion (MDI). In adjusting covariance matrices, we expand or shrink their elements based on the noisy image. While most results reported in the literature assume a particular noise type, we propose a framework without assuming particular noise characteristics. Without denoising the corrupted source, we apply our method directly to the segmentation of noisy sources. We apply the proposed procedure to the segmentation of aerial images with Salt and Pepper noise and with independent Gaussian noise, and we compare our results with those of the median filter restoration method and the blind deconvolution-based method, respectively. We show that our procedure has better performance than image restoration-based techniques and closely matches to the performance of HMGMM for clean images in terms of both visual segmentation results and error rate.
Keywords :
Gaussian noise; covariance matrices; hidden Markov models; image segmentation; Gaussian noise; aerial image segmentation; blind deconvolution-based method; camera sensors; covariance matrices; image acquisition; image noise; image processing algorithms; image restoration-based techniques; median filter restoration method; medical MRI images; minimum discrimination information distortion; noisy communication channels; processing characteristics; robust hidden Markov Gauss mixture vector quantizer; salt and pepper noise; scanner sensors; Cameras; Communication channels; Covariance matrix; Gaussian noise; Gaussian processes; Hidden Markov models; Image restoration; Image segmentation; Image sensors; Noise robustness; Covariance adjustment; Gauss mixture model (GMM); hidden Markov model (HMM); image classification; image segmentation; independent Gaussian noise; machine learning; pattern recognition; salt and pepper noise; signal and noise modeling; supervised learning; Algorithms; Artificial Intelligence; Image Processing, Computer-Assisted; Markov Chains; Normal Distribution; Pattern Recognition, Automated;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2009.2019433