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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >APPLICATION OF DEEP LEARNING OF MULTI-TEMPORAL SENTINEL-1 IMAGES FOR THE CLASSIFICATION OF COASTAL VEGETATION ZONE OF THE DANUBE DELTA
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APPLICATION OF DEEP LEARNING OF MULTI-TEMPORAL SENTINEL-1 IMAGES FOR THE CLASSIFICATION OF COASTAL VEGETATION ZONE OF THE DANUBE DELTA

机译:深度SENTINEL-1图像深度学习在丹布特三角洲海岸植被带分类中的应用

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Land cover is a fundamental variable for regional planning, as well as for the study and understanding of the environment. This work propose a multi-temporal approach relying on a fusion of radar multi-sensor data and information collected by the latest sensor (Sentinel-1) with a view to obtaining better results than traditional image processing techniques. The Danube Delta is the site for this work. The spatial approach relies on new spatial analysis technologies and methodologies: Deep Learning of multi-temporal Sentinel-1. We propose a deep learning network for image classification which exploits the multi-temporal characteristic of Sentinel-1 data. The model we employ is a Gated Recurrent Unit (GRU) Network, a recurrent neural network that explicitly takes into account the time dimension via a gated mechanism to perform the final prediction. The main quality of the GRU network is its ability to consider only the important part of the information coming from the temporal data discarding the irrelevant information via a forgetting mechanism. We propose to use such network structure to classify a series of images Sentinel-1 (20 Sentinel-1 images acquired between 9.10.2014 and 01.04.2016). The results are compared with results of the classification of Random Forest.
机译:土地覆盖是区域规划以及环境研究和理解的基本变量。这项工作提出了一种多时间方法,该方法依靠雷达多传感器数据和最新传感器(Sentinel-1)收集的信息的融合,以期获得比传统图像处理技术更好的结果。多瑙河三角洲是这项工作的地点。空间方法依赖于新的空间分析技术和方法:多时间Sentinel-1的深度学习。我们提出了一种用于图像分类的深度学习网络,该网络利用了Sentinel-1数据的多时相特征。我们采用的模型是门控递归单元(GRU)网络,这是一个递归神经网络,它通过门控机制明确考虑了时间维度以执行最终预测。 GRU网络的主要质量在于其仅考虑来自时间数据的重要部分信息的能力,这些时间数据通过遗忘机制丢弃了不相关的信息。我们建议使用这种网络结构对一系列Sentinel-1图像进行分类(在2014年10月9日至2016年1月4日之间获取了20张Sentinel-1图像)。将结果与随机森林分类的​​结果进行比较。

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