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Agro Doc is basically an app that will help farmers easily pinpoint their crop diseases using their smartphones. The app uses a pre trained tensorflow model to identify issues and then suggest possible cures for the crop infections/diseases. #AndroidDevChallenge

Navneet7k/AgroDocRevamp

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Google drive link to the submission >> https://docs.google.com/document/d/1jlkzbvv53CHBnFo6L_2lq2lukFLkLd_CGSssBvn9InY/

AgroDoc App

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AgroDoc is an Android Application that would allow farmers to treat their plant diseases in a series of steps which are predefined in our system. We are using Tensorflow library(Machine Learning library) to detect plant disease. The farmers can use their smartphone to scan a particular plant leaf which they suspect for having a plant disease. We have generated custom re trained tensorflow models using the possible plant diseases. Here we are retraining a mobilenet_0.50 model. The model is pre trained with common classifications, but on top of it we are training it with various leaf diseases. We then analyse the plant diseases, symptoms etc and then generate proper measures to improve plant health.

Use Case :

The leaf of a particular plant/tree may differ in certain characteristics based on geographical conditions. Even within the same geographical conditions the leaves of a particular plant/tree may differ in characteristics like patterns and all. So if we try to match a leaf image sample with two or three samples which we have pre saved, we may not yield accurate results. This is because even same plant's leaves on different geographical conditions can show different patterns. So we need to have a model that has similar geographical conditions as this farmer. Training a model with a large number of image samples within this geographical condition will definitely increase the accuracy of plant disease detection.

Google's Help :

For this project, we will need huge datasets to build a model that is trustworthy. So the only way to do that will be to ask for contributions in the form of datasets/code. It is almost impractical to build such a model without a community help. I would like to get google's help in getting this project noticeable

Project Timeline :

December 25, 2019 - UX/UI, set of all functionalities to be incorporated are finalised
January 25,2020 - Collecting sample datasets and training a model to be used for offline operations are done
February 1, 2020 - testing and deploying the tensorflow lite model in the app (offline model).
February 8, 2020 - incorporating firebase mlkit for working in online conditions
February 20, 2020 - finalised the setup for training the dataset in cloud and further setup to be done for the process are carried out
March 20, 2020 - formalised a way to collect the user scanned data and train them using the cloud training process

App Screens/Flow :

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about us

contributer 1 : Navneet Krishna

Stackoverflow :https://stackoverflow.com/users/8009433/navneet-krishna?tab=profile Blog : https://www.freshbytelabs.com/

Hi, I'm Navneet from Kochi,India. I love solving common problems that are out there. I also love hackathons and other coding events. The AgroDoc app is one of my projects in which i had been spending most of my time recently. I have also won 1st runners up position for AgroDoc App in RapidValue Hackathon, please see here >> https://www.rapidvaluesolutions.com/event/coders-innovate-for-the-digital-future-hackathon19/

contributer 2 : Abdul Haseeb

Website: https://sites.google.com/view/haseebpvt

I'm Haseeb from Thrissur, Kerala. I believe science and computers togather can solve many real world problems that we are facing today. It can make our lives simple and safe. I always love working in projects like these.

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Agro Doc is basically an app that will help farmers easily pinpoint their crop diseases using their smartphones. The app uses a pre trained tensorflow model to identify issues and then suggest possible cures for the crop infections/diseases. #AndroidDevChallenge

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