论文标题
预训练模型的协作使得更好的几次学习者
Collaboration of Pre-trained Models Makes Better Few-shot Learner
论文作者
论文摘要
很少有射击分类需要深层神经网络才能仅从有限的培训图像中学习广义表示,这在低数据制度中很有挑战,但很重要。最近,基于剪辑的方法显示出有希望的很少的射击性能受益于对比的语言图像预训练。基于这一点,我们质疑大规模的预训练是否可以减轻少数数据的缺陷,并通过预知的知识帮助表示表示。在本文中,我们提出了COMO,这是对预训练的模型的合作,该模型结合了各种培训范式中的各种先验知识,以获得更好的几次学习。我们的科莫包括:剪辑的语言对抗性知识,Dino的视力对抗性知识以及Dall-E的语言基础知识。具体而言,科莫在两个方面工作:很少的数据扩展和多样化的知识合奏。首先,我们通过零摄影dall-e生成综合图像,以丰富少量训练数据,而无需任何人力。另一方面,我们引入了一个可学习的多知识适配器(MK-apapter),以适应剪辑和恐龙的预测。通过这种合作,COMO可以完全释放不同预训练方法的潜力,并将其统一以进行几次分类。我们在11个数据集上进行了广泛的实验,以证明我们方法的优越性和概括能力。
Few-shot classification requires deep neural networks to learn generalized representations only from limited training images, which is challenging but significant in low-data regimes. Recently, CLIP-based methods have shown promising few-shot performance benefited from the contrastive language-image pre-training. Based on this point, we question if the large-scale pre-training can alleviate the few-shot data deficiency and also assist the representation learning by the pre-learned knowledge. In this paper, we propose CoMo, a Collaboration of pre-trained Models that incorporates diverse prior knowledge from various pre-training paradigms for better few-shot learning. Our CoMo includes: CLIP's language-contrastive knowledge, DINO's vision-contrastive knowledge, and DALL-E's language-generative knowledge. Specifically, CoMo works in two aspects: few-shot data expansion and diverse knowledge ensemble. For one, we generate synthetic images via zero-shot DALL-E to enrich the few-shot training data without any manpower. For the other, we introduce a learnable Multi-Knowledge Adapter (MK-Adapter) to adaptively blend the predictions from CLIP and DINO. By such collaboration, CoMo can fully unleash the potential of different pre-training methods and unify them to perform state-of-the-art for few-shot classification. We conduct extensive experiments on 11 datasets to demonstrate the superiority and generalization ability of our approach.