用于引导视觉预训练的屏蔽通道建模

IF 11.6 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Yang Liu, Xinlong Wang, Muzhi Zhu, Yue Cao, Tiejun Huang, Chunhua Shen
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引用次数: 0

摘要

大型视觉模型最近在计算机视觉领域取得了巨大成功,例如用于大规模图像-文本对比学习的 CLIP。它们在表征学习方面具有突出的潜力,并在各种下游任务中表现出很强的迁移能力。然而,由于训练成本巨大、训练不稳定、难以收集大量训练数据等原因,直接从头开始训练一个更大的 CLIP 模型非常困难。在这项工作中,我们旨在扩大 CLIP 模型的规模,并通过自监督表示学习扩展其强大的能力。我们引入了掩蔽信道建模(MCM),这是一种新的自我监督学习框架,它能随机掩蔽 CLIP 模型提取的输入特征图,并重建缺失的特征。与将原始像素作为输入和输出的掩蔽图像建模(MIM)不同,MCM 通过掩蔽视觉特征的随机通道并重建被破坏的通道,在高维语义空间执行掩蔽建模。我们的研究表明,通道图非常适合掩蔽建模,因为视觉特征在不同通道之间具有语义结构。我们证明,我们的方法能以较低的训练成本轻松扩展 CLIP 模型,并扩展其在零次学习、少量学习和端到端微调方面的能力。基于 CLIP ViT-L,MCM 在 8 个基准测试中平均提高了 0.5% 的零镜头图像分类准确率。通过少量样本(如 1 次或 2 次),MCM 在适应 11 个图像分类基准时取得了显著提高。此外,在对不同下游任务进行端到端微调时,MCM 表现出强劲的性能,例如,在 ImageNet-1K 分类中,CLIP ViT-B 的 top-1 准确率提高了 0.9%;在 ADE20K 语义分割中,MCM 的 mIoU 提高了 2.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Masked Channel Modeling for Bootstrapping Visual Pre-training

Masked Channel Modeling for Bootstrapping Visual Pre-training

Large vision models have achieved great success in computer vision recently, e.g., CLIP for large-scale image-text contrastive learning. They have prominent potential in representation learning and show strong transfer ability in various downstream tasks. However, directly training a larger CLIP model from scratch is difficult because of the enormous training cost, unstable training, and difficulty in collecting a large amount of training data. In this work, we aim to scale the sizes of CLIP models and extend their strong capabilities with self-supervised representation learning. We introduce masked channel modeling (MCM), a new self-supervised learning framework that randomly masks the input feature maps extracted by a CLIP model and reconstructs the missing features. Unlike masked image modeling (MIM) which takes raw pixels as the input and output, MCM performs masked modeling at a high-dimensional semantic space by masking random channels of the visual features and reconstructing the corrupted channels. We show that channel maps are a great fit for masked modeling, as the visual features are semantically structured across channels. We demonstrate that our method can easily scale up the CLIP model at a low training cost, and extend its capabilities on zero-shot learning, few-shot learning, and end-to-end fine-tuning. Based on CLIP ViT-L, MCM improves the zero-shot image classification accuracy by 0.5% averaged over 8 benchmarks. With a few samples, e.g., 1-shot or 2-shot, MCM achieves significant improvements when adapting to 11 image classification benchmarks. In addition, MCM shows strong performance when end-to-end fine-tuned on different downstream tasks, e.g., improving CLIP ViT-B by 0.9% top-1 accuracy on ImageNet-1K classification and 2.5% mIoU on ADE20K semantic segmentation.

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来源期刊
International Journal of Computer Vision
International Journal of Computer Vision 工程技术-计算机:人工智能
CiteScore
29.80
自引率
2.10%
发文量
163
审稿时长
6 months
期刊介绍: The International Journal of Computer Vision (IJCV) serves as a platform for sharing new research findings in the rapidly growing field of computer vision. It publishes 12 issues annually and presents high-quality, original contributions to the science and engineering of computer vision. The journal encompasses various types of articles to cater to different research outputs. Regular articles, which span up to 25 journal pages, focus on significant technical advancements that are of broad interest to the field. These articles showcase substantial progress in computer vision. Short articles, limited to 10 pages, offer a swift publication path for novel research outcomes. They provide a quicker means for sharing new findings with the computer vision community. Survey articles, comprising up to 30 pages, offer critical evaluations of the current state of the art in computer vision or offer tutorial presentations of relevant topics. These articles provide comprehensive and insightful overviews of specific subject areas. In addition to technical articles, the journal also includes book reviews, position papers, and editorials by prominent scientific figures. These contributions serve to complement the technical content and provide valuable perspectives. The journal encourages authors to include supplementary material online, such as images, video sequences, data sets, and software. This additional material enhances the understanding and reproducibility of the published research. Overall, the International Journal of Computer Vision is a comprehensive publication that caters to researchers in this rapidly growing field. It covers a range of article types, offers additional online resources, and facilitates the dissemination of impactful research.
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