What: With the economic and technological development of cities, environmental pollution problems are arising, such as water, noise, and air pollution. In particular, air pollution has a direct impact on human health through the exposure of pollutants and particulates, which has increa
Android app to Predicting Air Quality using computer vision and machine learning
What:
With the economic and technological development of cities, environmental pollution problems are arising, such as water, noise, and air pollution.
In particular, air pollution has a direct impact on human health through the exposure of pollutants and particulates, which has increased the interest in air pollution and its impacts among the scientific community. The main causes associated with air pollution are the burning of fossil fuels, agriculture, exhaust from factories and industries, residential heating, and natural disasters.
How:
We will be using computer vision and machine to solve this problem by creating three models
1)image classifier (We predict the AQI from user photos using the following features. These features are extracted by traditional image processing techniques, and combined by a linear model)
2)meteorological model (. Our second model works with images directly as is common in deep learning. Transmission: This describes scene attenuation and the amount of light entering the phone camera after being reflected by air particles)
3)custom image-based model (by combining the result of the above two models we will able to predict the air quality index)
Objectives:
We will predict air quality with the cheapest way possible and by using it people will take care of themselves better than before.
our system has the following objectives:
Following is the product functionality of our app:
Portable air quality index metres are very expensive and inconvenient to carry around. Nowadays everyone has a phone and camera in it. We will make it cheaper to check the air quality and this will help to solve this ever-growing world problem.
This could be done with pollution sensors — although they can be expensive to deploy at scale. Our goal was to design a reliable and inexpensive air quality estimation solution, accessible to everyone with a smartphone. Our goal is to develop an Android-based mobile application to provide local, real-time air quality estimation using smartphone camera images.
| Item Name | Type | No. of Units | Per Unit Cost (in Rs) | Total (in Rs) |
|---|---|---|---|---|
| mobile | Equipment | 2 | 35000 | 70000 |
| Total in (Rs) | 70000 |
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