Sens-VisualNews:用于检测耸动图像的基准数据集 / Sens-VisualNews: A Benchmark Dataset for Sensational Image Detection
1️⃣ 一句话总结
该论文提出了一个名为Sens-VisualNews的新数据集,包含9576张新闻图片,用于训练和评估模型检测图片中是否含有刻意引发强烈情绪或震惊感的耸动内容,并借此研究了多种多模态大语言模型在零样本和微调场景下的检测性能与鲁棒性。
The detection of sensational content in media items can be a critical filtering mechanism for identifying check-worthy content and flagging potential disinformation, since such content triggers physiological arousal that often bypasses critical evaluation and accelerates viral sharing. In this paper we introduce the task of sensational image detection, which aims to determine whether an image contains shocking, provocative, or emotionally charged features to grab attention and trigger strong emotional responses. To support research on this task, we create a new benchmark dataset (called Sens-VisualNews) that contains 9,576 images from news items, annotated based on the (in-)existence of various sensational concepts and events in their visual content. Finally, using Sens-VisualNews, we study the prompt sensitivity, performance and robustness of a wide range of open SotA Multimodal LLMs, across both zero-shot and fine-tuned settings.
Sens-VisualNews:用于检测耸动图像的基准数据集 / Sens-VisualNews: A Benchmark Dataset for Sensational Image Detection
该论文提出了一个名为Sens-VisualNews的新数据集,包含9576张新闻图片,用于训练和评估模型检测图片中是否含有刻意引发强烈情绪或震惊感的耸动内容,并借此研究了多种多模态大语言模型在零样本和微调场景下的检测性能与鲁棒性。
源自 arXiv: 2605.10394