Images shared on social media help crisis managers gain situational awareness and assess incurred damages, among other response tasks. As the volume and velocity of such content are typically high, real-time image classification has become an urgent need for a faster disaster response. Recent advances in computer vision and deep neural networks have enabled the development of models for real-time image classification for a number of tasks, including detecting crisis incidents, filtering irrelevant images, classifying images into specific humanitarian categories, and assessing the severity of the damage. To develop robust real-time models, it is necessary to understand the capability of the publicly available pre-trained models for these tasks, which remains to be under-explored in the crisis informatics literature. In this study, we address such limitations by investigating ten different network architectures for four different tasks using the largest publicly available datasets for these tasks. We also explore various data augmentation strategies, semi-supervised techniques, and a multitask learning setup. In our extensive experiments, we achieve promising results.
翻译:在社交媒体上分享的图像有助于危机管理者了解情况并评估所造成的损害,除其他应对任务外,这些内容的数量和速度通常很高,因此,实时图像分类已成为一项紧迫的需要,需要更快地应对灾害。计算机视觉和深神经网络方面的最近进展,使得能够为一些任务开发实时图像分类模型,包括发现危机事件、过滤不相干图像、将图像分类为特定人道主义类别以及评估损害的严重程度。为了开发强有力的实时模型,有必要了解公众为这些任务提供的预先培训模型的能力,这些模型在危机信息学文献中仍未得到充分探讨。在本研究中,我们通过利用为这些任务提供的最大公开数据集,对10个不同的网络结构进行调查,解决了这些局限性。我们还探索了各种数据增强战略、半监督技术以及多任务学习设置。在广泛的实验中,我们取得了有希望的结果。