Offline Face Recognition in Flutter – No Paid APIs, No limit

Build Attendance & Security Systems in Flutter with Face Detection & Recognitions -No Paid API, Full Offline, 2026 ready

Offline Face Recognition in Flutter – No Paid APIs, No limit
Offline Face Recognition in Flutter – No Paid APIs, No limit

Offline Face Recognition in Flutter – No Paid APIs, No limit free download

Build Attendance & Security Systems in Flutter with Face Detection & Recognitions -No Paid API, Full Offline, 2026 ready

Want to build smart, AI-powered face recognition apps in Flutter—without internet, without paid APIs, and with complete data privacy?

This hands-on course teaches you how to integrate Face Detection and Face Recognition in your Flutter apps using TensorFlow Lite and Google ML Kit, all running entirely offline on the device.

Whether you're creating a face-based attendance app, a smart home security system, or a privacy-first authentication feature, this course gives you everything you need—from real-time camera feeds to face matching using trained models.


What You’ll Learn:

  • Understand how face recognition works and what powers it under the hood

  • Set up your Flutter environment on Windows or macOS

  • Build an app to capture/select images using the device camera or gallery

  • Implement fast, accurate face detection using Google ML Kit

  • Perform face recognition using pre-trained FaceNet & MobileFaceNet models (TFLite)

  • Match and manage multiple faces with local embeddings

  • Capture and process real-time camera feeds for live recognition

  • Improve accuracy by registering multiple angles of a face

  • Build robust apps that work entirely offline—no internet or API key needed

  • Apply your skills to real-world use cases like attendance, login, and access control


Why Choose This Course?

  • Offline & Private: Keep all data on-device—perfect for secure apps

  • No API Costs: Use open-source models and tools—no subscriptions required

  • Real-Time Capabilities: Learn how to capture and process live camera frames

  • AI-Powered: Leverage powerful deep learning models for on-device recognition

  • Fully Practical: Build real-world, functional apps—not just theory

  • Focused on Flutter: Tailored specifically for Flutter developers with real use cases


Who This Course Is For:

  • Flutter developers who want to add facial AI features to their apps

  • App builders working on secure login, attendance, or identity verification apps

  • Developers seeking offline, privacy-first AI implementations

  • Beginners and intermediate devs interested in AI and Flutter integration

Technologies Covered:

  • Flutter & Dart

  • TensorFlow Lite (TFLite)

  • Google ML Kit (Face Detection)

  • FaceNet & MobileFaceNet

  • Image Picker & Camera Plugins

  • Real-time Camera Streams

  • On-device Embedding & Matching

By the end of this course...

You’ll have the knowledge and skills to build your own fully offline, private, and fast face recognition apps using Flutter—perfect for building AI-powered tools where privacy, speed, and cost-efficiency matter most.

Enroll now and start building next-gen Flutter apps that recognize faces—without needing the cloud.