Long Short-Term Memory Neural Networks for Online Disturbance Detection in Satellite Image Time Series

被引:68
作者
Kong, Yun-Long [1 ]
Huang, Qingqing [1 ]
Wang, Chengyi [1 ]
Chen, Jingbo [1 ]
Chen, Jiansheng [1 ]
He, Dongxu [1 ]
机构
[1] Chinese Acad Sci, Inst Remote Sensing & Digital Earth, Beijing 100101, Peoples R China
关键词
long short-term memory; LSTM; recurrent neural network; RNN; online disturbance detection; satellite image time series; SITS; CLASSIFICATION; VEGETATION;
D O I
10.3390/rs10030452
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
A satellite image time series (SITS) contains a significant amount of temporal information. By analysing this type of data, the pattern of the changes in the object of concern can be explored. The natural change in the Earth's surface is relatively slow and exhibits a pronounced pattern. Some natural events (for example, fires, floods, plant diseases, and insect pests) and human activities (for example, deforestation and urbanisation) will disturb this pattern and cause a relatively profound change on the Earth's surface. These events are usually referred to as disturbances. However, disturbances in ecosystems are not easy to detect from SITS data, because SITS contain combined information on disturbances, phenological variations and noise in remote sensing data. In this paper, a novel framework is proposed for online disturbance detection from SITS. The framework is based on long short-term memory (LSTM) networks. First, LSTM networks are trained by historical SITS. The trained LSTM networks are then used to predict new time series data. Last, the predicted data are compared with real data, and the noticeable deviations reveal disturbances. Experimental results using 16-day compositions of the moderate resolution imaging spectroradiometer (MOD13Q1) illustrate the effectiveness and stability of the proposed approach for online disturbance detection.
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页数:13
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