CREMA-D

Actor dataset

A dataset of multimodal emotional expressions collected from 7442 actors through a crowd-sourced platform.

Crowd Sourced Emotional Multimodal Actors Dataset (CREMA-D)

GitHub

369 stars
10 watching
121 forks
Language: R
last commit: about 2 years ago

Related projects:

Repository Description Stars
helsinki-nlp/xed A multilingual dataset for sentiment analysis and emotion detection from movie subtitles. 56
openm3d/m3dbench An open-source software project providing a comprehensive 3D instruction-following dataset with multi-modal prompts for training large language models. 57
ainfosec/crema A compiler and runtime system for executing a minimalist programming language in sub-Turing Complete space. 64
asonge/loom A collection of composable and extensible conflict-free data types designed to track causality for modifications 224
iigroup/mm-celeba-hq-dataset A large-scale dataset for training and evaluating algorithms for text-driven face generation and understanding tasks. 220
jostineho/mememoji A facial emotion recognition system that uses deep learning to classify basic emotions from images of faces. 766
ymcui/cmrc2018 A collection of data for evaluating Chinese machine reading comprehension systems 415
celebv-hq/celebv-hq A large-scale video dataset with diverse facial attribute annotations, enabling research on face-related videos. 399
nkohari/kseq An implementation of a simple CRDT that represents an ordered sequence of items, designed to handle concurrent modifications in collaborative editing systems. 57
henkmollema/dommel A simple and convenient API for CRUD operations using Dapper. 635
fwang91/imdb-face A large-scale noise-controlled face recognition dataset designed to study the impact of data noise on recognition accuracy. 431
e9t/nsmc A dataset of Korean movie reviews with labeled sentiment annotations. 566
cthoyt/chembl-downloader A tool for accessing and processing ChEMBL data in a reproducible way. 69
switchablenorms/celebamask-hq A large-scale face image dataset for training and evaluating algorithms in face parsing, recognition, generation, and editing. 2,123
michael-wzhu/promptcblue A large-scale instruction-tuning dataset for multi-task and few-shot learning in the medical domain 323