Title of article :
Robust Fuzzy Content Based Regularization Technique in Super Resolution Imaging
Author/Authors :
Yaghmaee, F. Electrical and Computer Engineering Department - Semnan University,Semnan, Iran
Pages :
9
From page :
769
To page :
777
Abstract :
Super-resolution (SR) aims to overcome the ill-posed conditions of image acquisition. SR facilitates scene recognition from low-resolution image(s). Generally assumes that high and low resolution images share similar intrinsic geometries. Various approaches have tried to aggregate the informative details of multiple low-resolution images into a high-resolution one. In this paper, we present a new robust fuzzy super resolution approach. Our approach, firstly registers two input image using SIFT-BP-RANSAC registration. Secondly, due to the importance of information gain ratio in the SR outcomes, the fuzzy regularization scheme uses the prior knowledge about the low-resolution image to add the amount of lost details of the input images to the registered one using the common linear observation model. Due to this fact, our approach iteratively tries to make a prediction of the high-resolution image based on the predefined regularization rules. Afterwards the low-resolution image have made out of the new high-resolution image. Minimizing the difference between the resulted low-resolution image and the input low-resolution image will justify our regularization rules. Flexible characteristics of fuzzy regularization behave adaptively on edges, detailed segments, and flat regions of local segments within the image. General information gain ratio also should grow during the regularization. Our fuzzy regularization indicates independence from the acquisition model. Consequently, robustness of our method on different ill-posed capturing conditions and against registration error noise compensates the shortcomings of same regularization approaches in the literature. Our final results indicate reduced aliasing achievements in comparison with similar recent state of the art works.
Farsi abstract :
ﺗﮑﻨﯿﮏ اﯾﺠﺎد ﺗﺼﻮﯾﺮي ﺑﺎ وﺿﻮح ﺑﺎﻻ ﺑﻪ ﮐﻤﮏ ﺗﻌﺪادي از ﺗﺼﺎوﯾﺮ ﺑﺎ ﮐﯿﻔﯿﺖ ﭘﺎﯾﯿﻦ، اﻣﺮوزه ﻧﻘﺶ ﻣﻬﻤﯽ در ﭘﺮدازش ﺗﺼﻮﯾﺮ داﺷﺘﻪ و ﮐﺎرﻫﺎي ﻣﺘﻌﺪدي در اﯾﻦ زﻣﯿﻨﻪ اﻧﺠﺎم ﺷﺪه اﺳﺖ. در اﯾﻦ ﻣﻘﺎﻟﻪ ﻣﺎ از ﯾﮏ ﺳﯿﺴﺘﻢ ﻓﺎزي ﺟﻬﺖ اﯾﺠﺎد ﺗﺼﻮﯾﺮ ﺑﺎ ﮐﯿﻔﯿﺖ اﺳﺘﻔﺎده ﮐﺮده اﯾﻢ. در روش ﭘﯿﺸﻨﻬﺎدي اﺑﺘﺪا دو ﺗﺼﻮﯾﺮ ﺑﻪ ﮐﻤﮏ روش SIFT-BP-RANSAC ﺗﺜﺒﯿﺖ ﻣﯿﺸﻮﻧﺪ. ﺳﭙﺲ ﺑﻪ ﮐﻤﮏ ﻣﻔﻬﻮم ﺑﻬﺮه اﻃﻼﻋﺎﺗﯽ، ﯾﮏ ﺳﯿﺴﺘﻢ ﻓﺎزي ﺑﻪ ﮐﻤﮏ اﻃﻼﻋﺎت ﻗﺒﻠﯽ ﺗﺼﺎوﯾﺮ ﮐﻢ ﮐﯿﻔﯿﺖ و اﺳﺘﻔﺎده از ﻗﻮاﻋﺪ از ﭘﯿﺶ ﺗﻌﺮﯾﻒ ﺷﺪه ﺑﻪ ﺻﻮرت ﺗﮑﺮار ﺷﻮﻧﺪه ﺳﻌﯽ در ﭘﯿﺶ ﺑﯿﻨﯽ ﺗﺼﺎوﯾﺮ ﺑﺎ ﮐﯿﻔﯿﺖ ﺑﺎﻻ ﻣﯽ ﮐﻨﺪ. ﺗﻨﻈﯿﻤﺎت ﻗﺎﺑﻞ اﻧﻌﻄﺎف ﻓﺎزي در اﯾﻦ روش ﺑﻪ ﺧﺼﻮص در ﻧﻮاﺣﯽ ﭘﯿﭽﯿﺪه و ﺣﺎوي ﺟﺰﺋﯿﺎت ﺗﺼﻮﯾﺮ ﻧﻈﯿﺮ ﯾﺎﻟﻬﺎ، ﮐﺎرآﯾﯽ ﺑﯿﺸﺘﺮي ﻧﺸﺎن ﻣﯿﺪﻫﺪ. روش ﭘﯿﺸﻨﻬﺎدي ﮐﺎﻣﻼ از روش ﺗﺼﻮﯾﺮﺑﺮداري ﻣﺴﺘﻘﻞ ﺑﻮده و ﻫﻤﭽﻨﯿﻦ در ﻣﻘﺎﯾﺴﻪ ﺑﺎ ﺳﺎﯾﺮ روﺷﻬﺎي ﻣﻄﺮح در اﯾﻦ زﻣﯿﻨﻪ، ﻧﺮخ ﺧﻄﺎي ﮐﻤﺘﺮي در ﻣﺮﺣﻠﻪ ﺗﺜﺒﯿﺖ و ﭘﺎﯾﺪاري ﺑﯿﺸﺘﺮي ر اﺳﺘﻔﺎده از ﺗﺼﺎوﯾﺮ اوﻟﯿﻪ ﺑﺪون ﮐﯿﻔﯿﺖ از ﺧﻮد ﻧﺸﺎن ﻣﯽ دهد.
Keywords :
Image Super Resolution , Fuzzy Regularization , SIFT-BP-RANSAC Registration
Journal title :
International Journal of Engineering
Serial Year :
2016
Record number :
2507585
Link To Document :
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