ExploreCfg

Config setup exploration

This project explores how varying configurations affect the performance of image captioning models

[NeurIPS2023] Exploring Diverse In-Context Configurations for Image Captioning

GitHub

27 stars
0 watching
0 forks
Language: Python
last commit: 5 months ago

Related projects:

Repository Description Stars
yiwuzhong/sub-gc A PyTorch implementation of image captioning models via scene graph decomposition. 96
cshizhe/asg2cap An image caption generation model that uses abstract scene graphs to fine-grained control and generate captions 200
fengyang0317/unsupervised_captioning An unsupervised image captioning framework that allows generating captions from images without paired data. 215
autofac/autofac.configuration Provides configuration support for a dependency injection container 40
weixi-feng/layoutgpt This project generates visual layouts and scenes using large language models. 300
contextualai/lens Enhances language models to generate text based on visual descriptions of images 351
go-gcfg/gcfg A Go library that reads INI-style configuration files into data structures 168
yangxuntu/sgae Automatically generates scene graphs from images to aid in image captioning tasks 220
xiadingz/video-caption.pytorch PyTorch implementation of video captioning, combining deep learning and computer vision techniques. 401
jkcfg/jk A tool for writing structured configuration files using a general-purpose language 406
ibm/max-image-caption-generator An image caption generation system utilizing machine learning models and deep neural networks. 84
chapternewscu/image-captioning-with-semantic-attention A deep learning model for generating image captions with semantic attention 51
jaywongwang/densevideocaptioning An implementation of a dense video captioning model with attention-based fusion and context gating 148
lukemelas/image-paragraph-captioning Trains image paragraph captioning models to generate diverse and accurate captions 90
kacky24/stylenet A PyTorch implementation of a framework for generating captions with styles for images and videos. 63