LURE

Model validator

Analyzing and mitigating object hallucination in large vision-language models to improve their accuracy and reliability.

[ICLR 2024] Analyzing and Mitigating Object Hallucination in Large Vision-Language Models

GitHub

134 stars
4 watching
5 forks
Language: Python
last commit: 7 months ago

Related projects:

Repository Description Stars
1zhou-wang/memvr An implementation of a method to mitigate hallucinations in large language models using visual re-tracing 27
yfzhang114/llava-align Debiasing techniques to minimize hallucinations in large visual language models 71
bradyfu/woodpecker A method to correct hallucinations in multimodal large language models during text generation 611
tianyi-lab/hallusionbench An image-context reasoning benchmark designed to challenge large vision-language models and help improve their accuracy 243
x-plug/mplug-halowl Evaluates and mitigates hallucinations in multimodal large language models 79
fuxiaoliu/lrv-instruction A research project focused on mitigating hallucinations in large multi-modal models by improving instruction tuning through robust training methods. 255
yuqifan1117/hallucidoctor This project provides tools and frameworks to mitigate hallucinatory toxicity in visual instruction data, allowing researchers to fine-tune MLLM models on specific datasets. 41
damo-nlp-sg/vcd An approach to reduce object hallucinations in large vision-language models by contrasting output distributions derived from original and distorted visual inputs 209
rucaibox/pope An evaluation framework for detecting object hallucinations in vision-language models 179
yuezih/less-is-more Improving multimodal hallucination mitigation in EOS decision-making by selectively supervising training data 31
nickjiang2378/vl-interp This project provides an official PyTorch implementation of a method to interpret and edit vision-language representations to mitigate hallucinations in image captions. 31
amazon-science/refchecker Automates fine-grained hallucination detection in large language model outputs 304
bcdnlp/faithscore Evaluates answers generated by large vision-language models to assess hallucinations 25
junyangwang0410/haelm A framework for detecting hallucinations in large language models 17
bronyayang/halle_control Controlling object hallucination in large multimodal models 28