Using a U-net convolutional neural network to map woody vegetation extent from high resolution satellite imagery across Queensland, Australia

Flood, Neil Watson, Fiona Collett, Lisa

Using a U-net convolutional neural network to map woody vegetation extent from high resolution satellite imagery across Queensland, Australia

Flood, Neil 1Watson, Fiona 2Collett, Lisa2
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作者信息

  • 1. Univ Queensland, Sch Earth & Environm Sci, Joint Remote Sensing Res Program, St Lucia, Qld 4072, Australia
  • 2. Queensland Dept Environm & Sci, Remote Sensing Ctr, GPO Box 2454, Brisbane, Qld 4001, Australia
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Abstract

Convolutional neural networks offer a new approach to classifying high resolution imagery. We use the U-net neural network architecture to map the presence or absence of trees and large shrubs across the Australian state of Queensland. From a state-wide mosaic of 1 m resolution 3-band Earth-i imagery, a selection of 827 squares (1 km(2)) are manually labeled for the presence of trees or large shrubs, and these are used to train the neural network. The training is intended to capture the textures which are primary visual cues of such vegetation. The trained neural network has an accuracy on independent data of around 90%. The resulting map over the whole of Queensland (1.73 million km(2)) is intended to be manually checked, and edited where necessary, to provide a high quality map of woody vegetation extent to serve a range of government policy objectives.

Key words

Woody vegetation/Neural network/High resolution satellite

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出版年

2019
International journal of applied earth observation and geoinformation

International journal of applied earth observation and geoinformation

SCI
ISSN:0303-2434
被引量24
参考文献量58
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