论文标题

Deep-Disaster:使用视觉数据无监督的灾难检测和本地化

Deep-Disaster: Unsupervised Disaster Detection and Localization Using Visual Data

论文作者

Shekarizadeh, Soroor, Rastgoo, Razieh, Al-Kuwari, Saif, Sabokrou, Mohammad

论文摘要

社交媒体在共享基本信息中起着重要的作用,这可以帮助人道主义组织在灾难事件发生期间和之后进行救援行动。但是,开发一种有效的方法可以在灾难的凌晨提供对社交媒体图像的快速分析仍然是一个开放的问题,这主要是由于缺乏合适的数据集和此任务的纯粹复杂性。此外,监督的方法不能很好地概括为新的灾难事件。在本文中,受知识蒸馏(KD)方法的成功启发,我们提出了一个无监督的深神经网络,以检测和定位社交媒体图像中的损害。我们提出的KD体系结构是一种基于功能的蒸馏方法,包括预先培训的教师和一个较小的学生网络,两个网络都具有包含生成器和歧视器的类似GAN体系结构。对学生网络进行了培训,以模仿老师在培训输入样本中的行为,进而包含不包含任何损坏区域的图像。因此,学生网络仅了解无损害数据的分布,并且与面向教师网络的损害赔偿的行为不同。为了检测损害,我们使用定义的分数函数来利用两个网络生成的特征之间的差异,该功能证明了发生损害的可能性。我们在基准数据集上的实验结果证实,我们的方法在检测和本地定位受损区域,尤其是新型灾难类型方面的最先进方法。

Social media plays a significant role in sharing essential information, which helps humanitarian organizations in rescue operations during and after disaster incidents. However, developing an efficient method that can provide rapid analysis of social media images in the early hours of disasters is still largely an open problem, mainly due to the lack of suitable datasets and the sheer complexity of this task. In addition, supervised methods can not generalize well to novel disaster incidents. In this paper, inspired by the success of Knowledge Distillation (KD) methods, we propose an unsupervised deep neural network to detect and localize damages in social media images. Our proposed KD architecture is a feature-based distillation approach that comprises a pre-trained teacher and a smaller student network, with both networks having similar GAN architecture containing a generator and a discriminator. The student network is trained to emulate the behavior of the teacher on training input samples, which, in turn, contain images that do not include any damaged regions. Therefore, the student network only learns the distribution of no damage data and would have different behavior from the teacher network-facing damages. To detect damage, we utilize the difference between features generated by two networks using a defined score function that demonstrates the probability of damages occurring. Our experimental results on the benchmark dataset confirm that our approach outperforms state-of-the-art methods in detecting and localizing the damaged areas, especially for novel disaster types.

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