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Effective classification of cyanobacteria blooms severity of small inland water bodies with AI by integrating Sentinel-2 data from GEE, DEM data from MPC and climate data from NOAA

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IoannisNasios/HarmfulAlgalBloomDetection

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Tick Tick Bloom: Harmful Algal Bloom Detection Challenge

This repo comes after author's participation in NASA's machine learning competition for cyanobacterial algal bloom severity classification.

competition_cyano_banner

General

  • Problem statement: use satellite imagery to detect and classify the severity of cyanobacteria blooms in small, inland water bodies.
  • Type: Ordinal regression
  • Host: NASA
  • Platform: Drivendata
  • Competition link: https://www.drivendata.org/competitions/143/tick-tick-bloom/
  • Placement: Top 1% (5/1377)
  • User Name: Ouranos

DownLoad Raw data Notebooks

Clima
Geomorphology
Satellites Earth Engine
Satellites Planetary Computer


Make Datasets Notebook

Make Datasets


Training and Inference Notebook

Training and inference pipeline below is a simplified version ranked 6th scoring 0.811 on private LB instead of author's best 5th place.

v42


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Effective classification of cyanobacteria blooms severity of small inland water bodies with AI by integrating Sentinel-2 data from GEE, DEM data from MPC and climate data from NOAA

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