DRIP-SLIP

Landslide detector

Automated landslide detection and extreme precipitation monitoring software

DRIP and SLIP Landslide Detection Package

GitHub

66 stars
18 watching
38 forks
Language: Python
last commit: over 1 year ago
Linked from 1 awesome list


Backlinks from these awesome lists:

Related projects:

Repository Description Stars
mhscience/landslides_detection Detects landslides from satellite imagery using machine learning and image segmentation 91
harishrithish7/fall-detection Automates detection of human falls from CCTV camera feeds and sends alerts to hospital authorities. 177
pyrocko/kite Software for processing InSAR surface displacement data in support of earthquake modeling 79
csaybar/ee-fastapi A web application for flood detection using satellite data and Google Earth Engine 83
mdbartos/pysheds A Python library for watershed delineation from digital elevation models. 722
nasa-jpl/its_live Automated global glacier data analysis tools and web application 45
nasa/nasaaccess Generates gridded ascii tables of climate and weather data needed to drive hydrological models 82
neptune-ai/open-solution-mapping-challenge This project provides a Python-based solution to the Mapping Challenge competition by applying various preprocessing techniques and augmentations to satellite imagery. 381
sdl60660/river-runner Visualizes the path of a rain droplet from any point to its end point using USGS data and Mapbox. 383
pangeo-data/climpred Verification and analysis of weather and climate forecasts using Python. 234
ahotovec/redpy A tool to detect repeating earthquakes using Python. 82
vmarsocci/3dcd Automatically inferring 2D and 3D change detection maps from bitemporal optical images without relying on DSMs. 28
johntruckenbrodt/pyrosar A framework for processing SAR satellite data from various sources 512
ghiggi/gpm_api Provides a Python interface to download and analyze GPM data from NASA's Precipitation Processing System 60
projectdrawdown/solutions An open-source software conversion of Project Drawdown's climate models into a Python-based framework for analyzing and predicting global warming solutions 218