Master Thesis: Deep Learning for Drone Images’ Segmentation

Website Vizer Drones

With you, for a more Precise Agriculture

Tired of boring master thesis topics? Do you want to do research on a hot topic with real impact on the industry and with good perspectives of cutting-edge publications? Can you work self-motivated and in a team? Then, take the challenge and join us as a master thesis intern.

 

Master Thesis’ final goal:

  • identify trees in drone imagery, using deep learning/computer vision
  • classify the identified trees according to species (pine trees, cork oaks, etc…), using deep learning/computer vision

 

Provided Dataset:

  • Thousands of drone images (partially labelled)
  • Richness – various light conditions, backgrounds and trees’ sizes

 

Technical requirements:

  • Python proficiency
  • Solid background on ML/DL
  • Academic background on Computer Vision
  • PyTorch or TensorFlow

 

Vizer Drones is a very young and dynamic startup, so you can expect a very flexible environment work style, with easy access to all employees. We expect you to be a problem-solver and ensure that you will never be alone in the process.

 

Feel free to reach out!


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