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    <dc:publisher>No publisher</dc:publisher>
    <dc:creator>Ferrari Michele</dc:creator>
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    <dc:date>2017-06-30T11:11:57Z</dc:date>
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    <title>Variational methods for imaging</title>
    <link>https://old.dmi.unife.it/en/ph-d-course-in-mathematics-and-computer-science/new_phd/new_phd/teaching/ferrara/courses/variational-methods-for-imaging</link>
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    <dc:publisher>No publisher</dc:publisher>
    <dc:creator>Ferrari Michele</dc:creator>
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  <item rdf:about="https://old.dmi.unife.it/en/ph-d-course-in-mathematics-and-computer-science/new_phd/new_phd/teaching/ferrara/courses/variational-methods-for-imaging/variational-methods-for-imaging">
    <title>Variational methods for imaging</title>
    <link>https://old.dmi.unife.it/en/ph-d-course-in-mathematics-and-computer-science/new_phd/new_phd/teaching/ferrara/courses/variational-methods-for-imaging/variational-methods-for-imaging</link>
    <description></description>
    <content:encoded xmlns:content="http://purl.org/rss/1.0/modules/content/"><![CDATA[<p> </p>
<p><a class="internal-link" href="http://dmi.unife.it/en/ph-d-course-in-mathematics-and-computer-science/new_phd/teaching/ferrara/courses/variational-methods-for-imaging"><b>Variational methods for imaging</b></a></p>
<p>One of the most difficult challenges in scientific computing is the  development of algorithms and software for large scale ill-posed inverse  problems, such as imaging denoising and deblurring. Such problems are  extremely sensitive to perturbations (e.g. noise) in the data. To  compute a physically reliable approximation from given noisy data, it is  necessary to incorporate appropriate regularization into the  mathematical model. Numerical methods to solve the regularized problem  require effective numerical optimization strategies and efficient large  scale matrix computations. In these lectures we describe first and  second-order methods, dual or primal-dual approaches, and Bregman-type  schemes and how to efficiently implement the ideas with iterative  methods on realistic large scale imaging problems.</p>
<p>Docenti: Valeria Ruggiero - Luca Zanni</p>
<p>18-20 January 2016 (15 ore)</p>
<p>Lectures start  Monday - January,  18, 2016, 9:00</p>
<p>Ferrara, Scientific-Technological Campus, Building B, Seminar room.</p>
<h3 class="r"><a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/copy_of_primo.pdf/at_download/file" type="application/pdf" class="internal-link internal-link-tofile" title="pdf, 284.6 KB">Preliminary material</a></h3>
<p> </p>
<p>Materials</p>
<p><a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/monotoneoperators.pdf/at_download/file" type="application/pdf" class="internal-link internal-link-tofile" title="pdf, 375.5 KB">Splitting methods for monotone operators (V. Ruggiero)</a></p>
<p><a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/terzo.pdf/at_download/file" type="application/pdf" class="internal-link internal-link-tofile" title="pdf, 601.5 KB">Lagrangian methods for convex optimization problems </a></p>
<p>I. Methods</p>
<p>II. Applications in Imaging   <a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/codici.zip/at_download/file" type="application/zip" class="internal-link internal-link-tofile" title="zip, 1.9 MB">Lab</a></p>
<p><a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/differentiable_opt.pdf/at_download/file" type="application/pdf" class="internal-link internal-link-tofile" title="pdf, 2.7 MB">First-order methods for differentiable optimization in  imaging</a></p>
<p>I . Scaled projection methods</p>
<p>II. Applications in Imaging</p>
<p>III. <a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/laboratorio.zip/at_download/file" type="application/zip" class="internal-link internal-link-tofile" title="zip, 5.7 MB">Lab </a></p>
<p>IV. <a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/SGP_issues.pdf/at_download/file" type="application/pdf" class="internal-link internal-link-tofile" title="pdf, 1014.1 KB">Ritz-like values in step-length seletion </a></p>]]></content:encoded>
    <dc:publisher>No publisher</dc:publisher>
    <dc:creator>Ferrari Michele</dc:creator>
    <dc:rights></dc:rights>
    <dc:date>2016-01-20T10:36:58Z</dc:date>
    <dc:type>Page</dc:type>
  </item>


  <item rdf:about="https://old.dmi.unife.it/en/phd/new_phd/teaching/ferrara/courses/variational-methods-for-imaging">
    <title>Variational methods for imaging</title>
    <link>https://old.dmi.unife.it/en/phd/new_phd/teaching/ferrara/courses/variational-methods-for-imaging</link>
    <description></description>
    
    <dc:publisher>No publisher</dc:publisher>
    <dc:creator>Ferrari Michele</dc:creator>
    <dc:rights></dc:rights>
    <dc:date>2016-01-07T09:24:40Z</dc:date>
    <dc:type>Folder</dc:type>
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  <item rdf:about="https://old.dmi.unife.it/en/phd/new_phd/teaching/ferrara/courses/variational-methods-for-imaging/variational-methods-for-imaging">
    <title>Variational methods for imaging</title>
    <link>https://old.dmi.unife.it/en/phd/new_phd/teaching/ferrara/courses/variational-methods-for-imaging/variational-methods-for-imaging</link>
    <description></description>
    <content:encoded xmlns:content="http://purl.org/rss/1.0/modules/content/"><![CDATA[<p> </p>
<p><a class="internal-link" href="http://dmi.unife.it/en/ph-d-course-in-mathematics-and-computer-science/new_phd/teaching/ferrara/courses/variational-methods-for-imaging"><b>Variational methods for imaging</b></a></p>
<p>One of the most difficult challenges in scientific computing is the  development of algorithms and software for large scale ill-posed inverse  problems, such as imaging denoising and deblurring. Such problems are  extremely sensitive to perturbations (e.g. noise) in the data. To  compute a physically reliable approximation from given noisy data, it is  necessary to incorporate appropriate regularization into the  mathematical model. Numerical methods to solve the regularized problem  require effective numerical optimization strategies and efficient large  scale matrix computations. In these lectures we describe first and  second-order methods, dual or primal-dual approaches, and Bregman-type  schemes and how to efficiently implement the ideas with iterative  methods on realistic large scale imaging problems.</p>
<p>Docenti: Valeria Ruggiero - Luca Zanni</p>
<p>18-20 January 2016 (15 ore)</p>
<p>Lectures start  Monday - January,  18, 2016, 9:00</p>
<p>Ferrara, Scientific-Technological Campus, Building B, Seminar room.</p>
<h3 class="r"><a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/copy_of_primo.pdf/at_download/file" type="application/pdf" class="internal-link internal-link-tofile" title="pdf, 284.6 KB">Preliminary material</a></h3>
<p> </p>
<p>Materials</p>
<p><a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/monotoneoperators.pdf/at_download/file" type="application/pdf" class="internal-link internal-link-tofile" title="pdf, 375.5 KB">Splitting methods for monotone operators (V. Ruggiero)</a></p>
<p><a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/terzo.pdf/at_download/file" type="application/pdf" class="internal-link internal-link-tofile" title="pdf, 601.5 KB">Lagrangian methods for convex optimization problems </a></p>
<p>I. Methods</p>
<p>II. Applications in Imaging   <a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/codici.zip/at_download/file" type="application/zip" class="internal-link internal-link-tofile" title="zip, 1.9 MB">Lab</a></p>
<p><a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/differentiable_opt.pdf/at_download/file" type="application/pdf" class="internal-link internal-link-tofile" title="pdf, 2.7 MB">First-order methods for differentiable optimization in  imaging</a></p>
<p>I . Scaled projection methods</p>
<p>II. Applications in Imaging</p>
<p>III. <a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/laboratorio.zip/at_download/file" type="application/zip" class="internal-link internal-link-tofile" title="zip, 5.7 MB">Lab </a></p>
<p>IV. <a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/SGP_issues.pdf/at_download/file" type="application/pdf" class="internal-link internal-link-tofile" title="pdf, 1014.1 KB">Ritz-like values in step-length seletion </a></p>]]></content:encoded>
    <dc:publisher>No publisher</dc:publisher>
    <dc:creator>Ferrari Michele</dc:creator>
    <dc:rights></dc:rights>
    <dc:date>2016-01-20T10:36:58Z</dc:date>
    <dc:type>Page</dc:type>
  </item>


  <item rdf:about="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging">
    <title>Variational methods for imaging</title>
    <link>https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging</link>
    <description></description>
    
    <dc:publisher>No publisher</dc:publisher>
    <dc:creator>Ferrari Michele</dc:creator>
    <dc:rights></dc:rights>
    <dc:date>2016-01-07T09:24:40Z</dc:date>
    <dc:type>Folder</dc:type>
  </item>


  <item rdf:about="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/variational-methods-for-imaging">
    <title>Variational methods for imaging</title>
    <link>https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/variational-methods-for-imaging</link>
    <description></description>
    <content:encoded xmlns:content="http://purl.org/rss/1.0/modules/content/"><![CDATA[<p> </p>
<p><a class="internal-link" href="http://dmi.unife.it/en/ph-d-course-in-mathematics-and-computer-science/new_phd/teaching/ferrara/courses/variational-methods-for-imaging"><b>Variational methods for imaging</b></a></p>
<p>One of the most difficult challenges in scientific computing is the  development of algorithms and software for large scale ill-posed inverse  problems, such as imaging denoising and deblurring. Such problems are  extremely sensitive to perturbations (e.g. noise) in the data. To  compute a physically reliable approximation from given noisy data, it is  necessary to incorporate appropriate regularization into the  mathematical model. Numerical methods to solve the regularized problem  require effective numerical optimization strategies and efficient large  scale matrix computations. In these lectures we describe first and  second-order methods, dual or primal-dual approaches, and Bregman-type  schemes and how to efficiently implement the ideas with iterative  methods on realistic large scale imaging problems.</p>
<p>Docenti: Valeria Ruggiero - Luca Zanni</p>
<p>18-20 January 2016 (15 ore)</p>
<p>Lectures start  Monday - January,  18, 2016, 9:00</p>
<p>Ferrara, Scientific-Technological Campus, Building B, Seminar room.</p>
<h3 class="r"><a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/copy_of_primo.pdf/at_download/file" type="application/pdf" class="internal-link internal-link-tofile" title="pdf, 284.6 KB">Preliminary material</a></h3>
<p> </p>
<p>Materials</p>
<p>I. Methods</p>
<p>II. Applications in Imaging   <a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/codici.zip/at_download/file" type="application/zip" class="internal-link internal-link-tofile" title="zip, 1.9 MB">Lab</a></p>
<p><a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/differentiable_opt.pdf/at_download/file" type="application/pdf" class="internal-link internal-link-tofile" title="pdf, 2.7 MB">First-order methods for differentiable optimization in  imaging</a></p>
<p>I . Scaled projection methods</p>
<p>II. Applications in Imaging</p>
<p>III. <a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/laboratorio.zip/at_download/file" type="application/zip" class="internal-link internal-link-tofile" title="zip, 5.7 MB">Lab </a></p>
<p>IV. <a href="https://old.dmi.unife.it/en/phd/teaching/old-2015-16/ferrara/courses/variational-methods-for-imaging/resources/SGP_issues.pdf/at_download/file" type="application/pdf" class="internal-link internal-link-tofile" title="pdf, 1014.1 KB">Ritz-like values in step-length seletion </a></p>]]></content:encoded>
    <dc:publisher>No publisher</dc:publisher>
    <dc:creator>Ferrari Michele</dc:creator>
    <dc:rights></dc:rights>
    <dc:date>2018-09-12T09:59:31Z</dc:date>
    <dc:type>Page</dc:type>
  </item>


  <item rdf:about="https://old.dmi.unife.it/en/events/vanishing-viscosity-solutions-of-scalar-conservation-laws-at-a-junction-carlotta-donadello-universite-de-franche-comte-francia">
    <title>Vanishing viscosity solutions of scalar conservation laws at a junction - Carlotta Donadello (Université de Franche-Comté, Francia)</title>
    <link>https://old.dmi.unife.it/en/events/vanishing-viscosity-solutions-of-scalar-conservation-laws-at-a-junction-carlotta-donadello-universite-de-franche-comte-francia</link>
    <description></description>
    <content:encoded xmlns:content="http://purl.org/rss/1.0/modules/content/"><![CDATA[<pre>Abstract
"We consider the Cauchy problem for scalar conservation laws on a junction where m incoming and n outgoing edges meet. In the first part of this talk we present a  well-posedness result for solutions obtained as limits of the vanishing viscosity approximations considered by Coclite and Garavello (SIAM, 2010).

The proof of our main result relies on the introduction of a family of Kruzhkov-type adapted entropies at the junction and a suitable definition of admissible solution. The key step in our construction consists in the description and analysis of the set of stationary solutions for the inviscid problem from the point of view developed  by Andreianov, Karlsen, Risebro and Cancès to deal with scalar conservation laws with discontinuous flux. 

Numerical tests, obtained by a finite volumes scheme, are presented to show the typical behavior of solutions.

 In the second part we explain how we can obtain a different class of limit solutions by changing the transmission condition at the junction for the parabolic (approximate) problems.    

This research project is developed in collaboration with Boris P. Andreianov (Univ. Tours), Giuseppe M. Coclite (Politec. Bari) and Sabrina F. Pellegrino (Univ. Bari)”
</pre>]]></content:encoded>
    <dc:publisher>No publisher</dc:publisher>
    <dc:creator>Stumbo Fabio</dc:creator>
    <dc:rights></dc:rights>
    
      <dc:subject>seminario</dc:subject>
    
    <dc:date>2017-05-29T09:48:27Z</dc:date>
    <dc:type>Event</dc:type>
  </item>


  <item rdf:about="https://old.dmi.unife.it/en/news/valeria-ruggiero-confirmed-as-director-of-the-national-group-of-scientific-computing">
    <title>Valeria Ruggiero confirmed as director of the GNCS</title>
    <link>https://old.dmi.unife.it/en/news/valeria-ruggiero-confirmed-as-director-of-the-national-group-of-scientific-computing</link>
    <description>Prof. Valeria Ruggiero has been confirmed as director of the National Group of Scientific Computing (GNCS) of Indam</description>
    <content:encoded xmlns:content="http://purl.org/rss/1.0/modules/content/"><![CDATA[
<p><span><img src="https://old.dmi.unife.it/en/img/foto_VR.jpg/image_thumb" alt="foto_VR.jpg" class="image-left" title="foto_VR.jpg" /></span></p>
<p> </p>
<p><span>Prof. Valeria Ruggiero has been confirmed as director of the National Group of Scientific Computing (GNCS) of Indam</span></p>
<p><span><a class="external-link" href="http://www.altamatematica.it/it/node/555">http://www.altamatematica.it/it/node/555</a> </span></p>]]></content:encoded>
    <dc:publisher>No publisher</dc:publisher>
    <dc:creator>Ferrari Michele</dc:creator>
    <dc:rights></dc:rights>
    
      <dc:subject>news_en</dc:subject>
    
    <dc:date>2017-08-08T16:50:34Z</dc:date>
    <dc:type>News Item</dc:type>
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    <description></description>
    
    <dc:publisher>No publisher</dc:publisher>
    <dc:creator>Marangon Sara</dc:creator>
    <dc:rights></dc:rights>
    <dc:date>2017-07-19T09:14:23Z</dc:date>
    <dc:type>Image</dc:type>
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    <link>https://old.dmi.unife.it/en/international/dual-master-degree-in-mathematics/upv.jpg</link>
    <description></description>
    
    <dc:publisher>No publisher</dc:publisher>
    <dc:creator>Marangon Sara</dc:creator>
    <dc:rights></dc:rights>
    <dc:date>2017-07-19T09:14:23Z</dc:date>
    <dc:type>Image</dc:type>
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  <item rdf:about="https://old.dmi.unife.it/en/news/universitat-politecnica-de-valencia-best-technical-university-in-spain">
    <title>Universitat Politècnica de València Best Technical University in Spain </title>
    <link>https://old.dmi.unife.it/en/news/universitat-politecnica-de-valencia-best-technical-university-in-spain</link>
    <description></description>
    <content:encoded xmlns:content="http://purl.org/rss/1.0/modules/content/"><![CDATA[<p>The Universitat Politècnica de València, partner in conjunction with the Universitat de València for our <a class="internal-link" href="http://www.dmi.unife.it/it/didattica/dual-master-degree-in-mathematics">Dual master degree programme</a> in Mathematics, has won for the third time an international award, gaining the title of  "Best Technical University in Spain" in the Academic Ranking  of World  Universities (ARWU) 2017.</p>]]></content:encoded>
    <dc:publisher>No publisher</dc:publisher>
    <dc:creator>Marangon Sara</dc:creator>
    <dc:rights></dc:rights>
    
      <dc:subject>news_en</dc:subject>
    
    <dc:date>2018-01-10T08:50:56Z</dc:date>
    <dc:type>News Item</dc:type>
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    <title>unimore.png</title>
    <link>https://old.dmi.unife.it/en/phd/backup-old-site/img/sigillo2015.svg</link>
    <description></description>
    
    <dc:publisher>No publisher</dc:publisher>
    <dc:creator>Ferrari Michele</dc:creator>
    <dc:rights></dc:rights>
    <dc:date>2017-07-31T13:26:52Z</dc:date>
    <dc:type>File</dc:type>
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    <dc:publisher>No publisher</dc:publisher>
    <dc:creator>Ferrari Michele</dc:creator>
    <dc:rights></dc:rights>
    <dc:date>2017-06-30T14:47:52Z</dc:date>
    <dc:type>Image</dc:type>
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    <title>unifeint.jpeg</title>
    <link>https://old.dmi.unife.it/en/img/unifeint.jpeg</link>
    <description></description>
    
    <dc:publisher>No publisher</dc:publisher>
    <dc:creator>Ferrari Michele</dc:creator>
    <dc:rights></dc:rights>
    <dc:date>2017-06-30T13:06:33Z</dc:date>
    <dc:type>Image</dc:type>
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