Artan Salihu
Artan Salihu
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Deep learning
Self-Supervised Learning for Wireless Localization
In this chapter you can find an overview of several data-driven techniques for feature learning of radio-frequency (RF) signals. From shallow dimensionality reduction to deep metric learning and self-supervised learning, we discuss different approaches to leveraging channel estimates for wireless localization.
Artan Salihu
,
Stefan Schwarz
,
Markus Rupp
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Attending EEML 2022
I attended the EEML 2022 and presented the work on wireless transformer (WiT).
Jul 8, 2022 11:30 AM — 2:30 PM
Vilnius, Lithuania
Artan Salihu
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Attention Aided CSI Wireless Localization
I presented the WiT at SPAWC 2022.
Jul 5, 2022 10:30 AM — 12:00 PM
Oulu, Finland
Artan Salihu
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Learning-based Remote Radio Head Selection and Localization in Distributed Antenna System
I presented the work on RRH selection and localization at 2022 EUCNC and 6G summit.
Jun 9, 2022 10:30 AM — 12:00 PM
Grenoble, France
Artan Salihu
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Attention Aided CSI Wireless Localization
We show that the whole estimated channel can be fed into the transformer block as a set of subcarriers. Without vectorizing the input, using recurrence, standard convolution operators, or fusion, attention can serve as an adaptive filter for resilient CSI.
Artan Salihu
,
Stefan Schwarz
,
Markus Rupp
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Poster
Video
Learning-based Remote Radio Head Selection and Localization in Distributed Antenna System
The fronthaul overhead issue in distributed RAN for 5G and 6G is addressed in a learning-based approach based on extreme value theory.
Artan Salihu
,
Stefan Schwarz
,
Markus Rupp
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Project
Slides
Video
Towards Scalable Uncertainty Aware DNN-based Wireless Localisation
The work on uncerstainty measure for wireless localization.
Aug 24, 2021 1:00 PM — 3:00 PM
Dublin, Ireland (Online)
Artan Salihu
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Low-dimensional Representation Learning for Wireless CSI-based Localisation
Whether contrastive triplet-loss is better than classical cross-entropy based classifier for low-dimensional CSI representation learning.
Artan Salihu
,
Stefan Schwarz
,
Markus Rupp
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Scenario 3D
3D environment models for scenarios.
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Scenario CSI
Channel traces obtained for scenarios.
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