One-shot Learning and deep face recognition notebooks and workshop materials
-
Updated
Apr 10, 2021 - Jupyter Notebook
One-shot Learning and deep face recognition notebooks and workshop materials
Implementation of related angular-margin-based classification loss functions for training (face) embedding models: SphereFace, CosFace, ArcFace and MagFace.
Face things on Android
Face matching using deep learning (CNN embedding + triplet loss)
Andorid library that provide a simple API to compare the similarity between 2 faces from bitmap. This can be implemented to a face recognition system, face authentication, and many more that needed face comparison technique.
Multi-IVE: Privacy Enhancement of Multiple Soft-Biometrics in Face Embeddings
Face Recognition using FaceNet
API returns face feature vector as a response. This API uses deep learning to generate face embedding 128 dimension vector using Keras on top of TensorFlow. Implementation is "FaceNet: A Unified Embedding for Face Recognition and Clustering". Inception-ResNet-v2 model.
Research SOTA Face Embedding Methods, Face Verification Methods. Apply for Face Verification in Parking App
A deep learning-based face verification system using MTCNN for face detection and InceptionResnetV1 for face recognition, fine-tuned on custom dataset.
a lightweight library that identifies individuals in videos by comparing faces against reference images. Leveraging deepface and Docker, it handles video processing, face embedding, matching, and output generation. Enable applications like surveillance and person verification.
This is the documentation regarding the personal project to calculate the value of the average face embedding vector across a large dataset of faces/photos.
Add a description, image, and links to the face-embedding topic page so that developers can more easily learn about it.
To associate your repository with the face-embedding topic, visit your repo's landing page and select "manage topics."