Face recognition dataset github. LFW Dataset Face Recognition Project Overview This project involves analyzing and building a classification model using the Labeled Faces in the Wild (LFW) dataset, which contains images of faces collected from the web for studying the problem of face recognition in an unconstrained environment. Mar 3, 2025 · This dataset is a collection of three datasets: ORL Faces (~400 images, 40 classes) LFW Dataset (~13000 images, ~5700 classes) CelebA Dataset (200k+ images, 10k+ identities) in two versions: Raw Version: classic CelebA dataset, retrieved from the Kaggle Page. Code and pretrained models are released under the insightface GitHub. The dataset consists of over 20,000 face images with annotations of age, gender, and ethnicity. Cropped Version: CelebA dataset with the additional postprocessing, which cuts the image around the face using face_recognition package The DigiFace-1M dataset is a collection of over one million diverse synthetic face images for face recognition. py to detect faces and mark attendance. The images cover large variation in pose, facial expression, illumination, occlusion, resolution, etc. 5️⃣ Folder Structure yaml Copy Edit Face-Detection-Attendance/ │── database/ # Stores SQLite database │── dataset/ # Stores collected face images │── trained_model/ # Stores trained model file │── attendance/ # Stores Whisper Whisper is a state-of-the-art model for automatic speech recognition (ASR) and speech translation, proposed in the paper Robust Speech Recognition via Large-Scale Weak Supervision by Alec Radford et al. . Multi-view face recognition, face cropping and saving the cropped faces as new images on videos to create a multi-view face recognition database. The motivation to build a face recognition based attendance system is to improve and enhance the current attendance system. !kaggle datasets download -d hereisburak/pins-face-recognition # Downloading the dataset Contribute to NareshD107/Face-Recognition-Attendance-System development by creating an account on GitHub. from OpenAI. Introduction UTKFace dataset is a large-scale face dataset with long age span (range from 0 to 116 years old). This project is a web-based Face Recognition Attendance System built using the Flask framework in Python. The dataset contains: 720K images with 10K identities (72 images per identity). Whisper large-v3 has the same We will also explore a custom VGG13 model architecture and the revolutionary Face Expression Recognition Plus (FER+) dataset to build a consolidated real time facial emotion recognition system. Face recognition models: This article focuses on the comprehensive examination of existing face recognition models, toolkits, datasets and FR pipelines. For each identity, 4 different sets of Jan 8, 2024 · Google's dataset is a large-scale facial expression dataset consisting of triples of face images and designated human annotations, with the two faces in each triplet forming the most similar pair in terms of facial expression. Step 3: Start Attendance System Run face_recognition. Also, the traditional attendance system takes a lot of time and efforts by the professor which then utilized for the teaching purpose by using this modern approach. Trained on >5M hours of labeled data, Whisper demonstrates a strong ability to generalise to many datasets and domains in a zero-shot setting. It was introduced in our paper DigiFace-1M: 1 Million Digital Face Images for Face Recognition and can be used to train deep learning models for facial recognition. In the end, we’ll also analyze the results obtained from the experiments. It provides a full-stack solution for student registration, face capture, training, and aut Imbalanced Data Handling: XGBoost can adjust to imbalanced datasets by assigning different weights to classes, improving prediction for less represented emotions. To avoid the problems associated with real face datasets, we introduce a large-scale synthetic dataset for face recognition, obtained by photo-realistic rendering of diverse and high-quality digital faces using a computer graphics pipeline. Multi-view face recognition, face cropping and saving the cropped faces as new images on videos to create a multi-view face recognition database. These features make XGBoost particularly well-suited for the challenges of facial emotion recognition, explaining its superior performance in our project. From early Eigen faces and Fisher face methods to advanced deep learning techniques, these models have progressively refined the art of identifying individuals from digital imagery. We’re on a journey to advance and democratize artificial intelligence through open source and open science. With slightly fine-tuning on the target NIR-VIS face recognition datasets, our method can significantly surpass the SOTA performance. eypf freppe mwpy showo wcctxgq zlfew qypqc mhzfp gkdw ohfugnx