POPE
Object detector
An evaluation framework for detecting object hallucinations in vision-language models
The official GitHub page for ''Evaluating Object Hallucination in Large Vision-Language Models''
179 stars
1 watching
6 forks
Language: Python
last commit: 8 months ago Related projects:
Repository | Description | Stars |
---|---|---|
openmoss/halluqa | An evaluation framework for assessing the performance of large language models on question-answering tasks with hallucination detection | 109 |
chengyangfu/retinamask | A Python-based implementation of a single-shot object detection algorithm using Mask R-CNN architecture. | 339 |
goatmessi8/rfbnet | An object detection system using a novel receptive field block module to enhance feature discriminability and robustness. | 1,413 |
ibm/max-object-detector | A tool for detecting objects in images using deep learning models | 290 |
amazon-science/refchecker | Automates fine-grained hallucination detection in large language model outputs | 302 |
taokong/ron | A deep learning framework for object detection tasks using a novel neural network architecture | 355 |
danielhfnr/tensorflow-carla-object-detection | A tool for training object detection classifiers using TensorFlow and Carla simulator data | 8 |
junyangwang0410/haelm | A framework for detecting hallucinations in large language models | 17 |
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 |
assafbk/mocha_code | A unified framework and benchmark for detecting and mitigating hallucinations in open-vocabulary image captioning models | 12 |
unsky/retinanet | A Python implementation of the RetinaNet architecture with focal loss for dense object detection. | 224 |
jxr326/swinmcnet | A Python-based object detection framework utilizing transformers and computer vision techniques to detect salient objects in RGB-thermal images | 16 |
bcdnlp/faithscore | Evaluates answers generated by large vision-language models to assess hallucinations | 25 |
yiyangzhou/lure | Analyzing and mitigating object hallucination in large vision-language models to improve their accuracy and reliability. | 134 |
liulei01/drbox | An open-source deep learning framework for detecting rotated objects in images | 421 |