SVL-Adapter: Self-Supervised Adapter for Vision-Language Pretrained Models

Omiros Pantazis, G. Brostow, Kate Jones, Oisin Mac Aodha
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引用次数: 12

Abstract

Vision-language models such as CLIP are pretrained on large volumes of internet sourced image and text pairs, and have been shown to sometimes exhibit impressive zero- and low-shot image classification performance. However, due to their size, fine-tuning these models on new datasets can be prohibitively expensive, both in terms of the supervision and compute required. To combat this, a series of light-weight adaptation methods have been proposed to efficiently adapt such models when limited supervision is available. In this work, we show that while effective on internet-style datasets, even those remedies under-deliver on classification tasks with images that differ significantly from those commonly found online. To address this issue, we present a new approach called SVL-Adapter that combines the complementary strengths of both vision-language pretraining and self-supervised representation learning. We report an average classification accuracy improvement of 10% in the low-shot setting when compared to existing methods, on a set of challenging visual classification tasks. Further, we present a fully automatic way of selecting an important blending hyperparameter for our model that does not require any held-out labeled validation data. Code for our project is available here: https://github.com/omipan/svl_adapter.
SVL-Adapter:视觉语言预训练模型的自监督适配器
像CLIP这样的视觉语言模型是在大量来自互联网的图像和文本对上进行预训练的,并且有时显示出令人印象深刻的零和低镜头图像分类性能。然而,由于它们的大小,在新数据集上对这些模型进行微调可能会非常昂贵,无论是在监督方面还是在所需的计算方面。为了解决这个问题,人们提出了一系列轻量级的自适应方法,以便在有限的监督下有效地适应这些模型。在这项工作中,我们表明,虽然在互联网风格的数据集上有效,但即使是这些补救措施,在处理与网上常见的图像有很大不同的图像分类任务时,也不能提供足够的效果。为了解决这个问题,我们提出了一种新的方法,称为SVL-Adapter,它结合了视觉语言预训练和自监督表示学习的互补优势。我们报告说,在一组具有挑战性的视觉分类任务中,与现有方法相比,在低镜头设置下的平均分类准确率提高了10%。此外,我们提出了一种全自动的方法来为我们的模型选择一个重要的混合超参数,而不需要任何保留的标记验证数据。我们项目的代码可以在这里找到:https://github.com/omipan/svl_adapter。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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