名词作为语义感知跨模态嵌入的正则化

Bhavin Jawade, D. Mohan, Naji Mohamed Ali, S. Setlur, Venugopal Govindaraju
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引用次数: 2

摘要

跨模态检索是一项具有广泛实际应用的基本视觉语言任务。文本到图像匹配是跨模式检索的最常见形式,其中,给定一个大型图像数据库和一个文本查询,任务是检索最相关的图像集。现有的方法利用双编码器的注意机制和排序损失来学习嵌入,可用于基于余弦相似度的检索。尽管这些方法尝试使用定制的注意机制跨视觉区域和文本单词执行语义对齐,但没有来自训练目标的明确监督来强制执行这种对齐。为了解决这个问题,我们提出了NAPReg,这是一种新的正则化公式,它将高级语义实体(即名词)作为共享的可学习代理投射到嵌入空间中。我们表明,使用这样的公式允许注意机制更好地学习词-区域对齐,同时也利用来自其他样本的区域信息来构建语义概念的更广义的潜在表示。在MS-COCO、Flickr30k和Flickr8k三个基准数据集上的实验表明,我们的方法在文本-图像和图像-文本检索任务的跨模态度量学习中取得了最先进的结果。代码:https://github.com/bhavinjawade/NAPReq
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NAPReg: Nouns As Proxies Regularization for Semantically Aware Cross-Modal Embeddings
Cross-modal retrieval is a fundamental vision-language task with a broad range of practical applications. Text-to-image matching is the most common form of cross-modal retrieval where, given a large database of images and a textual query, the task is to retrieve the most relevant set of images. Existing methods utilize dual encoders with an attention mechanism and a ranking loss for learning embeddings that can be used for retrieval based on cosine similarity. Despite the fact that these methods attempt to perform semantic alignment across visual regions and textual words using tailored attention mechanisms, there is no explicit supervision from the training objective to enforce such alignment. To address this, we propose NAPReg, a novel regularization formulation that projects high-level semantic entities i.e Nouns into the embedding space as shared learnable proxies. We show that using such a formulation allows the attention mechanism to learn better word-region alignment while also utilizing region information from other samples to build a more generalized latent representation for semantic concepts. Experiments on three benchmark datasets i.e. MS-COCO, Flickr30k and Flickr8k demonstrate that our method achieves state-of-the-art results in cross-modal metric learning for text-image and image-text retrieval tasks. Code: https://github.com/bhavinjawade/NAPReq
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