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首页> 外文期刊>Journal of Applied Remote Sensing >Semisupervised classification of hurricane damage from postevent aerial imagery using deep learning
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Semisupervised classification of hurricane damage from postevent aerial imagery using deep learning

机译:使用深度学习的Postevent Airaile Imagery的飓风损坏的半精品分类

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摘要

Aerial images can greatly facilitate rescue efforts and recovery in the aftermath of hurricane disasters. Although supervised classification methods have been successfully applied to aerial imaging for building damage evaluation, their use remains challenging since supervised classifiers have to be trained using a large number of labeled samples, which are not available soon after disasters. However, rapid response is crucial for rescue tasks, which places greater demands on classification methods. To accelerate their deployment, a semisupervised classification method is proposed in this paper using a large number of unlabeled samples and only a few labeled samples that could be rapidly obtained. The proposed approach consists of three steps: segmentation, unsupervised pretraining using convolutional autoencoders (CAE), and supervised fine-tuning using convolutional neural networks (CNN). Leveraging the representation capability of CAE, the learned knowledge from CAE could be transferred to the counterparts of CNN. After pretraining, the CNN classifier is further refined with a few labeled samples to improve feature discrimination. To demonstrate this methodology, a recognition strategy of damaged buildings based on context information using only vertical postevent aerial two-dimensional images is presented in this paper. As a case study, a coastal area affected by the 2012 Sandy hurricane is investigated. Experimental results show that the proposed semisupervised method produces an overall accuracy of 88.3% and obtains an improvement of up to 9% against a CNN classifier trained from scratch. (C) 2018 Society of Photo Optical Instrumentation Engineers (SPIE)
机译:空中图像可以极大地促进飓风灾害后的努力和康复。虽然监督分类方法已成功应用于用于建立损伤评估的空中成像,但它们的使用仍然具有挑战性,因为必须使用大量标记的样本培训,因此灾害不久的监督分类器不得训练,这是灾害不久的。然而,快速反应对于救援任务至关重要,这使得对分类方法的需求更大。为了加速他们的部署,本文用大量未标记的样品提出了一种半化分类方法,并且只有少量标记的样品可以快速获得。该方法包括三个步骤:分段,使用卷积AutoEncoders(CAE)无监督预测,并使用卷积神经网络(CNN)进行微调。利用CAE的表示能力,CAE的学习知识可以转移到CNN的对应物。预先预测后,CNN分类器进一步精制有少数标记的样品以改善特征识别。为了证明这种方法,本文提出了基于仅使用垂直的后期空中二维图像的基于上下文信息的受损建筑的识别策略。作为一个案例研究,调查了受2012年桑迪飓风影响的沿海地区。实验结果表明,所提出的半质化方法产生88.3%的总体精度,并在从头划痕训练的CNN分类器中获得高达9%的提高。 (c)2018年照片光学仪表工程师(SPIE)

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