Skip to content

Intro to Machine Learning and Deep Learning for Earth-Life Sciences

Notifications You must be signed in to change notification settings

hbsmith/ELSI-DL-Bootcamp

 
 

Repository files navigation

ELSI-DL-Bootcamp

Intro to Machine Learning and Deep Learning for Earth-Life Sciences

Slides

Notebooks

Data: Kaggle - DeepSat (SAT-6) Airborne Dataset

405,000 image patches each of size 28x28 and covering 6 landcover classes

Content

  • Each sample image is 28x28 pixels and consists of 4 bands - red, green, blue and near infrared.
  • The training and test labels are one-hot encoded 1x6 vectors
  • The six classes represent the six broad land covers which include barren land, trees, grassland, roads, buildings and water bodies.
  • Training and test datasets belong to disjoint set of image tiles.
  • Each image patch is size normalized to 28x28 pixels.
  • Once generated, both the training and testing datasets were randomized using a pseudo-random number generator.

About

Intro to Machine Learning and Deep Learning for Earth-Life Sciences

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 100.0%