论文标题
请“注意”不利天气:基于天气引起注意的对象检测
Pay "Attention" to Adverse Weather: Weather-aware Attention-based Object Detection
论文作者
论文摘要
尽管最近的神经网络最近取得了进步,但由于某些传感器在不利天气中对某些传感器的看法不佳,对不利天气的对象检测仍然具有挑战性。多模式融合不是依靠一个传感器,而是一种有前途的方法,可以根据多个传感器提供冗余检测信息。但是,在动态不利天气条件下,大多数现有的多模式融合方法在不同检测环境下调整不同传感器的焦点无效。此外,在复杂的天气条件下同时观察本地和全球信息至关重要,这在大多数早期或晚期多模式融合工作中都被忽略了。鉴于这些,本文提出了一个全球本地关注(GLA)框架,以在两个融合阶段适应多模式感应流(即相机,门控相机和激光镜数据)的多模式感应流。具体而言,GLA通过本地注意网络和通过全球注意力网络的后期融合整合了早期融合,以处理本地和全球信息,该信息会自动将更高的权重分配给模态,并在后期融合时使用更好的检测功能来适应特定的天气状况。实验结果表明,与最先进的融合方法相比,在各种不利天气条件下(例如雾,浓雾和雪),该拟议GLA的表现优异。
Despite the recent advances of deep neural networks, object detection for adverse weather remains challenging due to the poor perception of some sensors in adverse weather. Instead of relying on one single sensor, multimodal fusion has been one promising approach to provide redundant detection information based on multiple sensors. However, most existing multimodal fusion approaches are ineffective in adjusting the focus of different sensors under varying detection environments in dynamic adverse weather conditions. Moreover, it is critical to simultaneously observe local and global information under complex weather conditions, which has been neglected in most early or late-stage multimodal fusion works. In view of these, this paper proposes a Global-Local Attention (GLA) framework to adaptively fuse the multi-modality sensing streams, i.e., camera, gated camera, and lidar data, at two fusion stages. Specifically, GLA integrates an early-stage fusion via a local attention network and a late-stage fusion via a global attention network to deal with both local and global information, which automatically allocates higher weights to the modality with better detection features at the late-stage fusion to cope with the specific weather condition adaptively. Experimental results demonstrate the superior performance of the proposed GLA compared with state-of-the-art fusion approaches under various adverse weather conditions, such as light fog, dense fog, and snow.