MULTI-TEMPORAL LAND COVER CLASSIFICATION WITH LONG SHORT-TERM MEMORY NEURAL NETWORKS
<i>Land cover classification (LCC)</i> is a central and wide field of research in earth observation and has already put forth a variety of classification techniques. Many approaches are based on classification techniques considering observation at certain points in time. However, some...
Main Authors: | , |
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Format: | Article |
Language: | English |
Published: |
Copernicus Publications
2017-05-01
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Series: | The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences |
Online Access: | http://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XLII-1-W1/551/2017/isprs-archives-XLII-1-W1-551-2017.pdf |
Summary: | <i>Land cover classification (LCC)</i> is a central and wide field of research in earth observation and has already put forth a variety of
classification techniques. Many approaches are based on classification techniques considering observation at certain points in time.
However, some land cover classes, such as crops, change their spectral characteristics due to environmental influences and can thus
not be monitored effectively with classical mono-temporal approaches. Nevertheless, these temporal observations should be utilized to
benefit the classification process. After extensive research has been conducted on modeling temporal dynamics by spectro-temporal
profiles using vegetation indices, we propose a deep learning approach to utilize these temporal characteristics for classification tasks.
In this work, we show how <i>long short-term memory</i> (LSTM) neural networks can be employed for crop identification purposes
with SENTINEL 2A observations from large study areas and label information provided by local authorities. We compare these
temporal neural network models, <i>i.e.</i>, LSTM and <i>recurrent neural network</i> (RNN), with a classical non-temporal <i>convolutional neural
network</i> (CNN) model and an additional <i>support vector machine</i> (SVM) baseline. With our rather straightforward LSTM variant, we
exceeded state-of-the-art classification performance, thus opening promising potential for further research. |
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ISSN: | 1682-1750 2194-9034 |