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Supervised Domain Adaptation #290

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ykobaya9 opened this issue Oct 8, 2020 · 0 comments · Fixed by #394
Closed

Supervised Domain Adaptation #290

ykobaya9 opened this issue Oct 8, 2020 · 0 comments · Fixed by #394
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@ykobaya9
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ykobaya9 commented Oct 8, 2020

Is your feature request related to a problem? Please describe.
This is my individual portion of the sprint 1 issue stemming from #79 . I am trying to devise an algorithm for supervised point set registration for domain adaptation. My first approach is using the Iterative closest point algorithm: https://ieeexplore.ieee.org/document/121791

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Experiments:

  • XOR and rotated XOR
  • MNIST and rotated MNIST
  • MNIST and SVHN
@ykobaya9 ykobaya9 changed the title LDDMM Domain Adaptation using SVHN & MNIST Dataset Self-Supervised Domain Adaptation Nov 11, 2020
@PSSF23 PSSF23 linked a pull request Dec 12, 2020 that will close this issue
@PSSF23 PSSF23 closed this as completed Dec 12, 2020
@ykobaya9 ykobaya9 changed the title Self-Supervised Domain Adaptation Supervised Domain Adaptation Dec 17, 2020
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