Advancing Visual Grounding with Scene Knowledge: Benchmark and Method

Zhihong Chen, Ruifei Zhang, Yibing Song, Xiang Wan, Guanbin Li
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引用次数: 1

Abstract

Visual grounding (VG) aims to establish fine-grained alignment between vision and language. Ideally, it can be a testbed for vision-and-language models to evaluate their understanding of the images and texts and their reasoning abilities over their joint space. However, most existing VG datasets are constructed using simple description texts, which do not require sufficient reasoning over the images and texts. This has been demonstrated in a recent study [27], where a simple LSTM-based text encoder without pretraining can achieve state-of-the-art performance on mainstream VG datasets. Therefore, in this paper, we propose a novel benchmark of Scene Knowledge-guided Visual Grounding (SK-VG), where the image content and referring expressions are not sufficient to ground the target objects, forcing the models to have a reasoning ability on the long-form scene knowledge. To perform this task, we propose two approaches to accept the triple-type input, where the former embeds knowledge into the image features before the image-query interaction; the latter leverages linguistic structure to assist in computing the image-text matching. We conduct extensive experiments to analyze the above methods and show that the proposed approaches achieve promising results but still leave room for improvement, including performance and interpretability. The dataset and code are available at https://github.com/zhjohnchan/SK-VG.
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用场景知识推进视觉基础:基准和方法
视觉基础(VG)旨在建立视觉和语言之间的细粒度一致性。理想情况下,它可以成为视觉和语言模型的测试平台,以评估它们对图像和文本的理解以及它们在联合空间上的推理能力。然而,大多数现有的VG数据集是使用简单的描述文本构建的,不需要对图像和文本进行充分的推理。最近的一项研究[27]已经证明了这一点,其中一个简单的基于lstm的文本编码器没有预训练,可以在主流VG数据集上实现最先进的性能。因此,在本文中,我们提出了一种新的场景知识引导视觉接地(SK-VG)基准,其中图像内容和参考表达式不足以接地目标对象,迫使模型对长形式的场景知识具有推理能力。为了完成这一任务,我们提出了两种接受三重类型输入的方法,其中前者在图像-查询交互之前将知识嵌入到图像特征中;后者利用语言结构来辅助计算图像-文本匹配。我们进行了大量的实验来分析上述方法,并表明所提出的方法取得了很好的结果,但仍有改进的空间,包括性能和可解释性。数据集和代码可在https://github.com/zhjohnchan/SK-VG上获得。
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