Deep learning-based algorithms can provide state-of-the-art accuracy for remote sensing technologies such as unmanned aerial vehicles (UAVs)/drones, potentially enhancing their remote sensing capabilities for many emergency response and disaster management applications. In particular, UAVs equipped with camera sensors can operating in remote and difficult to access disaster-stricken areas, analyze the image and alert in the presence of various calamities such as collapsed buildings, flood, or fire in order to faster mitigate their effects on the environment and on human population. However, the integration of deep learning introduces heavy computational requirements, preventing the deployment of such deep neural networks in many scenarios that impose low-latency constraints on inference, in order to make mission-critical decisions in real time. To this end, this article focuses on the efficient aerial image classification from on-board a UAV for emergency response/monitoring applications. Specifically, a dedicated Aerial Image Database for Emergency Response applications is introduced and a comparative analysis of existing approaches is performed. Through this analysis a lightweight convolutional neural network architecture is proposed, referred to as EmergencyNet, based on atrous convolutions to process multiresolution features and capable of running efficiently on low-power embedded platforms achieving upto 20x higher performance compared to existing models with minimal memory requirements with less than 1% accuracy drop compared to state-of-the-art models.
翻译:深层学习算法可以为无人驾驶航空器(无人驾驶航空器)/载体等遥感技术提供最先进的精确度,从而有可能提高用于许多应急反应和灾害管理应用的遥感能力,特别是配备有摄影传感器的无人驾驶航空器能够在偏远和难以进入受灾地区的地方运作,分析在各种灾难,如倒塌的建筑物、洪水或火灾情况下的图像和警报,以更快减轻其对环境和人类人口的影响。然而,深层学习的整合带来了沉重的计算要求,防止在许多对推断造成低延迟度限制的情景中部署这种深层神经网络,以便实时作出对任务至关重要的决定。为此,本文章侧重于从机上高效的航空图像分类,作为应急/监测应用的UAVAV。具体地说,引入了专门的应急应用空气图像数据库,并对现有方法进行了比较分析。通过这一分析,提议了一个轻量的神经神经网络结构,称为应急网络,其基础是快速革命,其基础是高变异性模型,其过程的多分辨率特征和低分辨率模型,比现有低能平台的低分辨率模型比低。