首页> 外文会议>Conference on Image and signal processing for remote sensing >Unsupervised change detection using hierarchical convolutional autoencoder
【24h】

Unsupervised change detection using hierarchical convolutional autoencoder

机译:使用分层卷积AutoEncoder的无监督变更检测

获取原文
获取外文期刊封面目录资料

摘要

Change detection (CD) benefits of the capability of deep-learning (DL) methods of exploiting complex temporal behaviors in a large amount of data. Unsupervised CD DL methods are preferred since they do not require labeled data. Unsupervised CD methods use autoencoders (AE) or convolutional AE (CAE) for CD. However, features provided by the CAE hidden layers tend to degrade the geometrical information during the encoding. To mitigate this effect, we propose an unsupervised CD exploiting a multilayer CAE trained by a hierarchical loss function. This loss function guarantees a better trade-off between noise reduction and preservation of geometrical details at each hidden layer of the CAE. On the contrary to standard CAE, the proposed novel loss function considers input/output specular pairs of multiple hidden layers. These layers are analyzed by considering encoder/decoder pairs that work at corresponding geometrical resolution and show similar spatial-context information. Single-layer loss functions are defined by comparing the specular corresponding encoder and decoder pairs then aggregated to design a multilayer loss function. The proposed hierarchical loss function allows for a layer-by-layer control of the training and improvement of the reconstruction quality of the hidden layers that better preserves the geometrical details while reducing noise. The CD is performed by processing bi-temporal remote sensing images with the CAE. A detail-preserving multi-scale CD process exploits the most informative features for bi-temporal images to compute the change map. Preliminary experimental results conducted on a couple of Landsat-8 multitemporal images acquired before and after a fire near Granada, Spain of July 8th. 2015, provided promising results.
机译:改变检测(CD)深度学习(DL)方法的能力在大量数据中利用复杂的时间行为的方法。未经监督的CD DL方法是优选的,因为它们不需要标记数据。无监督的CD方法使用AutoEncoders(AE)或CD卷积AE(CAE)。然而,CAE隐藏层提供的特征倾向于在编码期间降低几何信息。为了缓解这种效果,我们提出了一种无监督的CD,利用由分层损失函数训练的多层CAE。该损失功能可确保降噪与CAE的每个隐藏层的降噪与几何细节之间的更好的折衷。与标准CAE相反,所提出的新型损失函数考虑输入/输出镜对多个隐藏层。通过考虑以相应的几何分辨率工作的编码器/解码器对来分析这些层,并显示类似的空间上下文信息。通过比较镜面相应的编码器和解码器对,然后聚合以设计多层损耗函数来定义单层损耗功能。所提出的层级损失功能允许逐层控制训练和改进隐藏层的重建质量,以在降低噪声的同时更好地保留几何细节。通过处理与CAE的双时效遥感图像来执行CD。保留细节的多尺度CD过程利用双颞图像的最具信息性功能来计算更改映射。在7月8日的西班牙格拉纳达附近的一对火灾近期和之后获得的几次Landsat-8多人物图像进行了初步实验结果。 2015年,提供了有希望的结果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号