Super Resolution of PET Images using Hybrid Regularization

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Author(s)

Jose Mejia 1,* Boris Mederos 2 Liliana Avelar-Sosa 3 Leticia Ortega Maynez 1

1. UACJ/Department of electrical and computation, Juarez, Mexico

2. UACJ/Department of physics and mathematics, Juarez, Mexico

3. UACJ/Department of industrial and manufacturing engineering, Juarez, Mexico

* Corresponding author.

DOI: https://doi.org/10.5815/ijigsp.2017.01.01

Received: 14 Sep. 2016 / Revised: 2 Nov. 2016 / Accepted: 30 Nov. 2016 / Published: 8 Jan. 2017

Index Terms

Super-resolution, PET, total variation

Abstract

Positron emission tomography images are used to diagnose, staggering, and monitoring several diseases like cancer and Alzheimer, also, this technique is used in clinical research to help to assess the therapeutic and toxic effects of drugs. However, a main drawback of this modality is the poor spatial resolution due to limiting factors such as positron range, instrumentation limits and the allowable doses of radiotracer for administration to patients. These factors also lead to low signal to noise ratios in the images. In this paper, we proposed to increment the resolution of the image and reduce noise by implementing a super resolution scheme, we proposed to use a hybrid regularization consisting of a TV term plus a Tikhonov term to solve the problem of low resolution and heavy noise. By using an anatomical driven scheme to balance between regularization terms we attain a better resolution image with preservation of small structures like lesions and reduced noise without blurring the edges of images. Experimental results and comparisons with other methods of the state-of-the-art show that our proposed scheme produces better preservation of details without adding artifacts when the resolution factor is increased. 

Cite This Paper

Jose Mejia, Boris Mederos, Liliana Avelar-Sosa, Leticia Ortega Maynez,"Super Resolution of PET Images using Hybrid Regularization", International Journal of Image, Graphics and Signal Processing(IJIGSP), Vol.9, No.1, pp.1-9, 2017. DOI: 10.5815/ijigsp.2017.01.01

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