Skip to content

A crowdsourcing app intended to allow users to be able to detect and report wildfires while incorporating machine learning

Notifications You must be signed in to change notification settings

RaymondDashWu/ai4crowdsourcing-wildfire-hackathon

Repository files navigation

Crowdsourcing4Mankind

Frontend Contribution by Jennifer Ma:

https://github.com/jenniferhm

crowdsource4mankind screenshot

Machine Learning by Raymond Wu:

https://github.com/RaymondDashWu

Note: Model has been converted from PyTorch to ONNX to Tensorflow for the purposes on the hackathon. Things may not work! https://github.com/onnx/onnx-tensorflow

ONNX model in case things don't work: TODO Link

Note: This screenshot is not 100% representative of the end product. Could not find a way to expose the Swift class to React Native!

API Design by Hong Tran:

https://github.com/Jessiehongtran

Hong's branch can be found here: https://github.com/RaymondDashWu/ai4crowdsourcing-wildfire-hackathon/tree/image-API-branch

Description

Crowdsourcing4Mankind is a mobile app geared towards the early detection of wildfires. The goal is to reduce the time it takes for a fire to be reported to authorities after it begins. The app was created as part of a hackathon run by AI for Mankind. Specifically their Challenge IA: Smoke vs No Smoke using Entire Image

Disclosure:

Crowdsourcing4Mankind is not complete. Key features and their current status are highlighted below. Please clone and create a pull request if you would like to contribute.

How it Works:

  • A user can use the app to find their location and see the likelihood of a fire forming in their area based on historical data and the current climate.
  • If the user spots smoke/fire, a picture can be taken through the app.
  • The image will be analyzed by the machine learning model, which will return a rating corresponding to the likelihood that there is a fire.
  • If the image scores above 70%, the user has the option of sending the image to the local authorities or to retake the image.
  • If the image scores below the threshold, then the user can choose to keep the image or delete it.

Primary Technologies:

Key Features & Status:

  • Location finder
    • Status: WIP - form needs to be completed and connected to backend
  • Camera
    • Status: WIP - need to use react-native-camera or other camera API
  • Polygon overlays of region with % of likelihood of fire based on current climate and historical data
    • Status: WIP - need to import historical fire data, temperature API, and add additional polygon overlays
  • In-app ML model to recognize smoke in an image
    • Status: WIP
  • Option to send image to local authorities if fire is detected
    • Status: WIP - need to add form to allow users to send image once threshold is reached
  • Train model to detect wildfires
    • Status: Completed - model can be found here. Note that this is a PyTorch model.
  • Convert PyTorch model to Tensorflow
    • Status: WIP
  • Convert Swift Core ML example to work `with React Native.
    • Status: WIP

About

A crowdsourcing app intended to allow users to be able to detect and report wildfires while incorporating machine learning

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Contributors 2

  •  
  •