The world's simplest facial recognition api for .NET on Windows, MacOS and Linux
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Updated
May 13, 2023 - C#
The world's simplest facial recognition api for .NET on Windows, MacOS and Linux
A Survey and Experiments on Annotated Corpora for Emotion Classification in Text
[IEEE SPL '24] ResEmoteNet: Bridging Accuracy and Loss Reduction in Facial Emotion Recognition
The repo contains an audio emotion detection model, facial emotion detection model, and a model that combines both these models to predict emotions from a video
Indonesian twitter dataset for emotion classification task
An emotion classifier of text containing technical content from the SE domain
Emotion text classification using Llama3-8b with LoRA and FlashAttention. Based on LLaMA-Factory.
SemEval2024-task 11: Bridging the Gap in Text-Based Emotion Detection
Emotionally responsive Virtual Metahuman CV with Real-Time User Facial Emotion Detection (Unreal Engine 5).
[RAVDESS] Speech Emotion Recognition with Convolutional Attention based Bi-GRU. (Best test accuracy of 87%)
The Project Babble Module for VRCFaceTracking v5.
Single-label and multi-label classifiers to detect emotions in lyrics achieved 0.65 and 0.82 F1 scores respectively.
Final year project made on sentiment analysis of images and text present in image
Logistic regression, text emotion classifier web application (with Streamlit), from data preprocession to model productionizing and deployment on Streamlit share.
GiMeFive: Towards Interpretable Facial Emotion Classification 😄😲😭😡🤢😨 (PyTorch Implementation)
A Docker-Based Federated Learning Framework Design and Deployment for Multi-modal Data Stream Classification
A Flask and Deep Learning Project that recognizes the emotion/mood of the user via either a photo or voice or text given as input by the user. It also contains a chatbot!
EmoEvent: A Multilingual Emotion Corpus based on different Events
It is the nlp task to classify empathetic dialogues datasets using RoBERTa, ERNIE-2.0 and XLNet with different preprocessing method. You can get some detailed introduction and experimental results in the link below.
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