Matej Lebl presents New methods for recognizing blurred images

On 2024-02-13 11:00:00 at G205, Karlovo náměstí 13, Praha 2
Blur is among the most common degradations encountered in image acquisition. In
computer vision tasks, it greatly reduces the success rate of any recognition
method. In the handcrafted methods space blur is mostly handled by restoration
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via deblurring, blur-invariant descriptors or blur invariant distances. In deep
learning, degradations are almost exclusively dealt with by augmenting the
training dataset.
This doctoral Thesis covers three out of the four areas - it expands and
generalize moment-based blur invariants, introduces new blur invariant measure
and proposes a novel convolutional network architecture which is invariant to
degradations alleviating the need for dataset augmentation.
Responsible person: Petr Pošík