Betreuer: | Mehdi Abdollahpour |
Art der Arbeit: | Projekt (MSc), Masterarbeit (MSc) |
Ausgabe: | 03/2025 |
Bearbeiter: | David Ebeye |
Status: | in Arbeit |
Kurzfassung: |
Motivation Compressed sensing is a technique used in signal processing and data compression. It's particularly useful when dealing with signals or data that can be represented sparsely. It can provide near perfect resonstruction with randomly sampled data. However, In certain applications, data reconstruction isn't the primary objective. In such instances, compressed learning (CL) is employed, which integrates compressed sensing with machine learning. In contrast to compressed sensing, the goal of CL is inference from the signal rather than signal reconstruction. Objectives Implementing a functioning compressed learning framework Statistical evaluation and comparison of the proposed method with classical CS methods Requirements Familiar with artificial neural networks and Python programming language Interest in image and signal processing Interest in novel deep learning topics like self-supervised learning, meta-learning, explainable AI, etc. Literature [1] A. Adler, M. Elad, and M. Zibulevsky, "Compressed learning: A deep neural network approach," arXiv preprint arXiv:1610.09615, Oct. 2016. |