We developed a web app and an app. The web app uses the computer vision algorithm to analyze if there's any potential inferno near any human settlement. The deployed model has an accuracy of 100% on validation set whereas 97.5% on test set. If the output comes out positive, then entering the coordinates of the place we can issue an alert.
That alert is then received by the experts/officials that then decide upon the set of certain actions (like evacuating from some part of the city 'X' to some part of the city 'Y') that needs to be followed by the civilians. If the civilians are having certain issues they may directly call or message the experts/officials too. The app also has a donation feature as well.
We hope to mitigate the loss of human lives through our project. In future enhancements, we also hope to use this alert system not only for fire but for different disasters too. (Like the Bhopal Gas tragedy of 1984)


Our team is from Bhopal and as mentioned earlier Bhopal was the site of the "Worst industrial disaster". Our parents were witness of that horrific incident. We thought that if people knew the correct course of action to take back then, it'd save so many lives.
We held team conferences to come up with our solution and decided upon the technologies that we'll need to incorporate to make our project. We used Python, Django, Tensorflow, Keras, CSS, Java Script, flutter, bootstrap and SQLite to make our project.
Our team faced various problems from poor performance of the model to many bugs in the app. At one point we were not even able to deploy the model on our web app. But at the end we were able to make the ends meet.
We used the images from the HIMAWARI geostationary satellite in the spot that fire resource in order to train our model. We took around 200 images in the .hdf format in 500m grid for the positive class as well as 200 satellite images from google images for the negative class.
https://www.youtube.com/watch?v=AutEnykdbNY&feature=youtu.be
https://data.nas.nasa.gov/geonex/data.php?dir=/geonexdata/HIMAWARI8/GEONEX-L1G
https://firms.modaps.eosdis.nasa.gov/map/