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      <dc:title>Moving object detection in noisy video sequences using deep convolutional disentangled representations.</dc:title>
      <dc:creator>García-González, Jorge</dc:creator>
      <dc:creator>Luque-Baena, Rafael Marcos</dc:creator>
      <dc:creator>Ortiz-de-Lazcano-Lobato, Juan Miguel</dc:creator>
      <dc:creator>López-Rubio, Ezequiel</dc:creator>
      <dc:subject>Procesado de imágenes</dc:subject>
      <dc:description>Universidad de Málaga. Campus de Excelencia Internacional Andalucía Tech.</dc:description>
      <dc:description>Noise robustness is crucial when approaching a moving de-&#xd;
tection problem since image noise is easily mistaken for&#xd;
movement. In order to deal with the noise, deep denoising&#xd;
autoencoders are commonly proposed to be applied on image&#xd;
patches with an inherent disadvantage with respect to the&#xd;
segmentation resolution. In this work, a fully convolutional&#xd;
autoencoder-based moving detection model is proposed in&#xd;
order to deal with noise with no patch extraction required.&#xd;
Different autoencoder structures and training strategies are&#xd;
also tested to get insights into the best network design ap-&#xd;
proach.</dc:description>
      <dc:date>2022-10-25T07:21:36Z</dc:date>
      <dc:date>2022-10-25T07:21:36Z</dc:date>
      <dc:date>2022</dc:date>
      <dc:type>conference output</dc:type>
      <dc:identifier>https://hdl.handle.net/10630/25286</dc:identifier>
      <dc:language>eng</dc:language>
      <dc:relation>IEEE International Conference on Image Processing</dc:relation>
      <dc:relation>Burdeos, Francia</dc:relation>
      <dc:relation>16/10/2022</dc:relation>
      <dc:rights>open access</dc:rights>
   </ow:Publication>
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