Skip to content

Latest commit

 

History

History

profile

Folders and files

NameName
Last commit message
Last commit date

parent directory

..
 
 

Bangkit Capstone Project 2022



Hi, we are C22-PS080


Profiles

We are a team of 6 consist of 2 CC Learning Path Students, 2 ML Learning Path Students, and 2 MD Learning Path Students.

Members

Learning Path Name Student ID University Contacts
Cloud Computing Ardinata Hari Saputra C2009G0955 Universitas Gunadarma LinkedIn
Github
Cloud Computing Muhammad Rayhan Hamada Budiman C2009G0981 Universitas Gunadarma LinkedIn
Github
Machine Learning Amar Rahman Kamal M2004F0189 Institut Teknologi Sepuluh November LinkedIn
Github
Machine Learning Rizkyka Mediano Sandie M7009G0995 Universitas Gunadarma LinkedIn
Github
Mobile Development Ahmad Budi Gustama A7211G1943 Universitas Indraprasta LinkedIn
Github
Mobile Development Nabilah Putri Cantika A7211F1961 Universitas Indraprasta LinkedIn
Github

Project Title:

Skin Disease Detection Using Image Classification Based on Android “SSkin”

Proposal Link

click here

Features

There are 3 main features we're planning for the app,

  • Authentication (Sign up and login)
    Where user candidate can sign up, or for existing user to login and starts using the app.
  • Skin disease image prediction
    Where user can take a picture of a region of their skin that is suspected to have some skin conditions.
  • Showing user's skin disease detection history
    Where user can see list of their skin disease diagnoses, that consist of predicted condition, photo of their region of skin, overview of the predicted condition and if exists, the first-aid solution to the condition, like treatment methods, or even if possible, medicines recommendations.

Plan

Cloud Infrastructure

Explanation

  • For authentication we will use Firebase Authentication, allowing user to sign up either with email and password, or just simply OAuth button tap.
  • For serving user-related data such as user profile and diagnostic histories.
  • Most prediction stuffs are mainly handled by Google App Engine that act as a REST API server that serves prediction from Vertex AI's model endpoint. After getting prediction result from Vertex AI's model endpoint, based from the result, GAE will fetch diagnosed skin disease's data from PostgreSQL instance (Compute Engine) that act as database instance. Before responding to the mobile client, GAE will also store request payload photos of user's skin region to Cloud Storage.

Documentation

Presentation

Click Here

Logo


No Background

Figma

Github

Dataset

Research