Image captioning research achieved breakthroughs in recent years by developing neural models that can generate diverse and high-quality descriptions for images drawn from the same distribution as training images. However, when facing out-of-distribution (OOD) images, such as corrupted images, or images containing unknown objects, the models fail in generating relevant captions. In this paper, we consider the problem of OOD detection in image captioning. We formulate the problem and suggest an evaluation setup for assessing the model's performance on the task. Then, we analyze and show the effectiveness of the caption's likelihood score at detecting and rejecting OOD images, which implies that the relatedness between the input image and the generated caption is encapsulated within the score.
翻译:图像字幕研究近年来取得了突破,开发了神经模型,能够产生与培训图像相同的分布图像的多样化和高质量描述。然而,当面临分布外图像(如被损坏的图像)或含有未知对象的图像时,模型未能产生相关字幕。在本文件中,我们考虑了图像字幕中的 OOD检测问题。我们提出问题并提出评估模型工作绩效的评估机制。然后,我们分析和展示该标题在探测和拒绝 OOOD图像方面的可能性分数的有效性,这意味着输入图像和生成的字幕之间的关联性被包含在分数中。