Mapping Individual Tree Species in an Urban Forest Using Airborne Lidar Data and Hyperspectral Imagery

@inproceedings{Zhang2012MappingIT,
  title={Mapping Individual Tree Species in an Urban Forest Using Airborne Lidar Data and Hyperspectral Imagery},
  author={Caiyun Zhang},
  year={2012}
}
0099-1112/12/7810–1079/$3.00/0 © 2012 American Society for Photogrammetry and Remote Sensing Abstract We developed a neural network based approach to identify urban tree species at the individual tree level from lidar and hyperspectral imagery. This approach is capable of modeling the characteristics of multiple spectral signatures within each species using an internally unsupervised engine, and is able to catch spectral differences between species using an externally supervised system. To… CONTINUE READING
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