Multi-VQG: Generating Engaging Questions for Multiple Images (2211.07441v2)
Abstract: Generating engaging content has drawn much recent attention in the NLP community. Asking questions is a natural way to respond to photos and promote awareness. However, most answers to questions in traditional question-answering (QA) datasets are factoids, which reduce individuals' willingness to answer. Furthermore, traditional visual question generation (VQG) confines the source data for question generation to single images, resulting in a limited ability to comprehend time-series information of the underlying event. In this paper, we propose generating engaging questions from multiple images. We present MVQG, a new dataset, and establish a series of baselines, including both end-to-end and dual-stage architectures. Results show that building stories behind the image sequence enables models to generate engaging questions, which confirms our assumption that people typically construct a picture of the event in their minds before asking questions. These results open up an exciting challenge for visual-and-LLMs to implicitly construct a story behind a series of photos to allow for creativity and experience sharing and hence draw attention to downstream applications.
- Min-Hsuan Yeh (6 papers)
- Vicent Chen (1 paper)
- Ting-Hao 'Kenneth' Haung (1 paper)
- Lun-Wei Ku (35 papers)