All Projects → DeepSystems → Supervisely Tutorials

DeepSystems / Supervisely Tutorials

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🌈 Tutorials for Supervise.ly

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Supervise.ly Tutorials

Deep Learning tutorials that use latest architectures and models along with dataset preparation tool Supervise.ly.

Tutorials

  • ANPR - Number plate detection with Supervisely and Tensorflow (medium)
  • UNet - Training road scene segmentation on Cityscapes with Tensorflow and UNet (medium)
  • SSD - Combining Cityscapes and Mapillary to train SSD using Supervise.ly (medium - coming soon)
  • anpr_ocr - Plane number recognition with Keras (medium)

Prerequisites

You're going to need:

  • An account on Supervise.ly
  • CUDA-capable GPU is required for some tutorials
  • Docker - Highly recommended

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