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 german traffic sign


Pre-Trained Vision-Language Models as Partial Annotators

arXiv.org Artificial Intelligence

Pre-trained vision-language models learn massive data to model unified representations of images and natural languages, which can be widely applied to downstream machine learning tasks. In addition to zero-shot inference, in order to better adapt pre-trained models to the requirements of downstream tasks, people usually use methods such as few-shot or parameter-efficient fine-tuning and knowledge distillation. However, annotating samples is laborious, while a large number of unlabeled samples can be easily obtained. In this paper, we investigate a novel "pre-trained annotating - weakly-supervised learning" paradigm for pre-trained model application and experiment on image classification tasks. Specifically, based on CLIP, we annotate image samples with multiple prompt templates to obtain multiple candidate labels to form the noisy partial label dataset, and design a collaborative consistency regularization algorithm to solve this problem. Our method simultaneously trains two neural networks, which collaboratively purify training labels for each other and obtain pseudo-labels for self-training, while adopting prototypical similarity alignment and noisy supervised contrastive learning to optimize model representation. In experiments, our method achieves performances far beyond zero-shot inference without introducing additional label information, and outperforms other weakly supervised learning and few-shot fine-tuning methods, and obtains smaller deployed models. Our code is available at: \url{https://anonymous.4open.science/r/Co-Reg-8CF9}.


Looking at German Traffic Signs

@machinelearnbot

You know, I don't think we as a species do enough looking at German traffic signs. I mean, sure, they are there when we drive through Germany, and we do (hopefully) see them, and sometimes we even register their meaning, and alter our behavior based on those meanings. But we don't do nearly enough looking at those bold, blue, red, and white, geometrical pictograms. I think this is a shame, as by virtue of not looking, we do not appreciate their simplistic genius of interlingual communication. That's why I decided to outsource all the looking to computers a while back when I was toying with an image classifier that would learn to classify traffic signs.