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TODO: MaskGeneration #116

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12 tasks
51N84D opened this issue Apr 2, 2020 · 4 comments
Open
12 tasks

TODO: MaskGeneration #116

51N84D opened this issue Apr 2, 2020 · 4 comments

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@51N84D
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51N84D commented Apr 2, 2020

  • Training on Unity Urban + Suburban Méli
  • Training on WD Méli
  • Training on heavier flooded images (Unity)
  • Conditioning on depth and segmentation Méli
  • Create standard test set (25 images) to evaluate MaskGen on Sun
  • Determine evaluation metrics for MaskGen Sun metrics paper
    • M-IOU
    • Pixel Accuracy
    • Hole detection
  • Domain Adaptation TianYu
    • Feature discriminator operates on each domain (3 domains -> 3 classes)
    • Try Sim2Real
@vict0rsch
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(write your names next to items you want to own 🥇)

@cc-ai cc-ai deleted a comment from sashavor Apr 2, 2020
@melisandeteng
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Depth maps of the WatchDogs dataset computed with MegaDepth model can be found in /network/tmp1/ccai/data/Ubisoft_LaForge_ClimateChange_DataSet/ .
They were computed on the non-flooded images resized to 512x384 pixels.
Depth can be misestimated for thin objects or when there are strong shadows for example.

@vict0rsch
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Hmm this isn't really good, is it? What's a representative inference @melisandeteng ? (I mean, not a worst nor best case scenario)

@vict0rsch
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Is this something we want in the test images?

2020-04-10 at 12 38

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