Face Recognition using the FaceNet model and MLKit on Android.
-
Updated
Feb 25, 2024 - Kotlin
Face Recognition using the FaceNet model and MLKit on Android.
A real-time face detection Android library
Text Detector from image for react native using firebase MLKit on android and Tesseract on iOS
📈ㅤ[ARTICLE] Firebase ML Kit 101 Series
A sample Face recognition app using Flutter and Firebase ML Kit
👀 🍕 SeeFood is a Flutter app which tells you whether photograph contains any food items or not.
OCR-Android
The project is made to help android developers understand and implement machine learning(ML) Kit provided by Firebase 🔥 as one of its features
Use your camera to read number plates and obtain vehicle details. Simple, ad-free and faster alternative to existing playstore apps
[Android] NSFW(Nude Content) Detector using Firebase AutoML and TensorFlow Lite
Gaze Estimation Framework with Android Firebase
The application allows the user to click a photograph and based on the picture display information about the monument/landmark. It also notifies the user about such monuments/landmarks in the vicinity. The app also allows the user to give their inputs about the object and add it to knowledge creation about the monuments/landmark.
An Android app that uses Firebase ML Kit, Firebase Authentication, Firebase Storage & Firebase Cloud Firestore.
PUBLISHED, but NOT maintained: Scanner app that uses Machine Learning text recognition to detect email addresses and phone numbers on a business card or computer screen. Simply point your camera and take a picture. Then choose to email call or text: FLUTTER + Firebase ML Kit -> ANDROID/iOS
💪 모두의 헬스 케어 비서 - MOBI 💪
This app detects the text from the picture input using camera or photos gallery. The app uses MLVisionTextModel for on device detection. The Vision framework from MLKit of Google is used here.
🔥 👀 Image recognition app build with Firebase.
Demonstration of MLkit in android with simple examples and samples
A simple app that uses Firebase ML-Kit for face detection. The app detects faces and all the landmarks such as ears, eyes, nose, and mouth and displays the Smiling Probability and probability for each eye.
Add a description, image, and links to the firebase-mlkit topic page so that developers can more easily learn about it.
To associate your repository with the firebase-mlkit topic, visit your repo's landing page and select "manage topics."