PO-1859 Proposal of an imaging PTV in stereotactic planning to take into account MRI geometric distortions

2021 ◽  
Vol 161 ◽  
pp. S1583-S1584
Author(s):  
P. Hinault ◽  
P. Hinault ◽  
T. Puiseux ◽  
A. Sewonu ◽  
I. Gardin ◽  
...  
2012 ◽  
Vol 19 (1) ◽  
pp. 70-79 ◽  
Author(s):  
Liyun Wang ◽  
Hefei Ling ◽  
Fuhao zou ◽  
Zhengding Lu

Author(s):  
Anthony J. Arduengo, III ◽  
Roland Krafczyk ◽  
Reinhard Schmutzler ◽  
Walter Mahler ◽  
William J. Marshall

2021 ◽  
Vol 2021 (29) ◽  
pp. 258-263
Author(s):  
Marius Pedersen ◽  
Seyed Ali Amirshahi

Over the years, a high number of different objective image quality metrics have been proposed. While some image quality metrics show a high correlation with subjective scores provided in different datasets, there still exists room for improvement. Different studies have pointed to evaluating the quality of images affected by geometrical distortions as a challenge for current image quality metrics. In this work, we introduce the Colourlab Image Database: Geometric Distortions (CID:GD) with 49 different reference images made specifically to evaluate image quality metrics. CID:GD is one of the first datasets which include three different types of geometrical distortions; seam carving, lens distortion, and image rotation. 35 state-ofthe-art image quality metrics are tested on this dataset, showing that apart from a handful of these objective metrics, most are not able to show a high performance. The dataset is available at <ext-link ext-link-type="url" xlink:href="http://www.colourlab.no/cid">www.colourlab.no/cid</ext-link>.


Author(s):  
Ibrahim Guelzim ◽  
Ahmed Hammouch ◽  
El Mustapha Mouaddib ◽  
Driss Aboutajdine

In the edge detection, the classical operators based on the derivation are sensitive to noise which causes detection errors. It is even more erroneous in the case of omnidirectional images, due to geometric distortions caused by the used sensors. This paper proposes a statistical method of edge detection invariant to image resolution applied to omnidirectional images without preliminary treatments. It is based on the entropy measure. The authors compared its behavior with existing methods on omnidirectional images and perspectives images. The criteria of comparisons are the parameters of Fram and Deutsch. For omnidirectional images, the authors used two types of neighborhood: fixed and adapted to the parameters of the sensor. The authors compared the results of detection visually. The tests are performed on grayscale images.


Author(s):  
Ibrahim Guelzim ◽  
Ahmed Hammouch ◽  
El Mustapha Mouaddib ◽  
Driss Aboutajdine

In the edge detection, the classical operators based on the derivation are sensitive to noise which causes detection errors. It is even more erroneous in the case of omnidirectional images, due to geometric distortions caused by the used sensors. This paper proposes a statistical method of edge detection invariant to image resolution applied to omnidirectional images without preliminary treatments. It is based on the entropy measure. The authors compared its behavior with existing methods on omnidirectional images and perspectives images. The criteria of comparisons are the parameters of Fram and Deutsch. For omnidirectional images, the authors used two types of neighborhood: fixed and adapted to the parameters of the sensor. The authors compared the results of detection visually. The tests are performed on grayscale images.


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