In recent years, vision and language pre-training (VLP) models have advanced the state-of-the-art results in a variety of cross-modal downstream tasks. Aligning cross-modal semantics is claimed to be one of the essential capabilities of VLP models. However, it still remains unclear about the inner working mechanism of alignment in VLP models. In this paper, we propose a new probing method that is based on image captioning to first empirically study the cross-modal semantics alignment of VLP models. Our probing method is built upon the fact that given an image-caption pair, the VLP models will give a score, indicating how well two modalities are aligned; maximizing such scores will generate sentences that VLP models believe are of good alignment. Analyzing these sentences thus will reveal in what way different modalities are aligned and how well these alignments are in VLP models. We apply our probing method to five popular VLP models, including UNITER, ROSITA, ViLBERT, CLIP, and LXMERT, and provide a comprehensive analysis of the generated captions guided by these models. Our results show that VLP models (1) focus more on just aligning objects with visual words, while neglecting global semantics; (2) prefer fixed sentence patterns, thus ignoring more important textual information including fluency and grammar; and (3) deem the captions with more visual words are better aligned with images. These findings indicate that VLP models still have weaknesses in cross-modal semantics alignment and we hope this work will draw researchers' attention to such problems when designing a new VLP model.
翻译:近年来,视觉和语言培训前模型(VLP)提高了各种跨模式下游任务的最新结果。 调整跨模式语义据称是VLP模型的基本能力之一。 然而,对于VLP模型内部调整工作机制,仍然不清楚。 在本文中,我们提出了一个基于图像的新的测试方法,该方法以首次实验性研究VLP模型的跨模式语义调整为标题。 我们的跨模式方法建立在以下事实之上:鉴于图像覆盖对齐,VLP模型将给出一个分数,表明两种模式如何一致;使这种分数最大化将产生VLP模型认为是良好一致的句子。 因此,分析这些句子将揭示不同模式的一致方式,以及这些校正在VLP模型中如何完善。 我们将我们的调查方法应用到五种通用的VLP模型, 包括UNITER、 VILBERT、 CLIP和LLT模型将给出一个分数分数分数分数分数, 显示这些模型和LTLS-LIML的更精确的值分析结果, 显示这些模型和SEMEML的精度。