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Die automatischen Untertitel, die mit Whisper Open AI in diesem Video-Player (und im Multistream-Video-Player) generiert werden, dienen der Bequemlichkeit und Barrierefreiheit. Es ist jedoch zu beachten, dass die Genauigkeit und Interpretation variieren können. Für mehr Informationen lesen Sie bitte die FAQs (Absatz 14)
Aufnahme Datum 2020-07-05

Kurs-Verknüpfung

Deep Learning - Plain Version

Zugang

Frei

Sprache

Englisch

Einrichtung

Lehrstuhl für Informatik 5 (Mustererkennung)

Produzent

Lehrstuhl für Informatik 5 (Mustererkennung)

Deep Learning - Weakly and Self-Supervised Learning Part 4

In this video, we look into contrastive losses and how they can be used in combination with self-supervised learning.

Further Reading:
A gentle Introduction to Deep Learning

References
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[18] Mehdi Noroozi and Paolo Favaro. “Unsupervised Learning of Visual Representations by Solving Jigsaw Puzzles”. In: Computer Vision – ECCV 2016. Cham: Springer International Publishing, 2016, pp. 69–84.
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[32] Ishan Misra and Laurens van der Maaten. “Self-Supervised Learning of Pretext-Invariant Representations”. In: arXiv e-prints, arXiv:1912.01991 (Dec. 2019). arXiv: 1912.01991 [cs.CV].
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[35] Tongzhou Wang and Phillip Isola. “Understanding Contrastive Representation Learning through Alignment and Uniformity on the Hypersphere”. In: arXiv e-prints, arXiv:2005.10242 (May 2020), arXiv:2005.10242. arXiv: 2005.10242 [cs.LG].
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Nächstes Video

Maier, Andreas
Prof. Dr. Andreas Maier
2020-07-10
Frei
Maier, Andreas
Prof. Dr. Andreas Maier
2020-07-10
Frei
Maier, Andreas
Prof. Dr. Andreas Maier
2020-07-10
Frei
Maier, Andreas
Prof. Dr. Andreas Maier
2020-07-10
Frei
Maier, Andreas
Prof. Dr. Andreas Maier
2020-07-10
Frei

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