Planned intervention: On Thursday 19/09 between 05:30-06:30 (UTC), Zenodo will be unavailable because of a scheduled upgrade in our storage cluster.

There is a newer version of the record available.

Published September 27, 2019 | Version v1
Dataset Open

A Convolutional Neural Network classifier identifies tree species in mixed-conifer forest from hyperspectral imagery

  • 1. Social Sciences Department, California Polytechnic State University, San Luis Obispo
  • 2. Department of Computer Sciences and Software Engineering, California Polytechnic State University, San Luis Obispo
  • 3. Amazon Corporation
  • 4. US Forest Service, PSW Research Station
  • 5. Bren School of Environmental Science and Management, University of California, Santa Barbara
  • 6. Department of Botany and Plant Sciences, University of California, Riverside

Description

Digital Publication of the training data polygons and hyperspectral imagery used in the manuscript "A Convolutional Neural Network classifier identifies tree species in mixed-conifer forest from hyperspectral imagery".

Code is available in a Jupyter Notebook and can be found here: https://github.com/jonathanventura/canopy

National Ecological Observatory Network. 2018. Provisional data downloaded from http://data.neonscience.org on 22 June 2018. Battelle, Boulder, CO, USA

Notes

Data to replicate the experiment is available for download in two zipped files: "NEON_D17_TEAK_DP1QA_20170627_181333_RGB_Reflectance.zip" (Imagery) "CNN_LABELS_2019.zip" (Training Label Shapefiles) * Note: The imagery is 5.5 gb (zipped). All code used to run the analysis is located in a repository here: https://github.com/jonathanventura/canopy The only flightline you will need to repeat our results is called "NEON_D17_TEAK_DP1_20170627_181333". If you download your own NEON data, the raw HDF 5 files can be converted to a geotiff using R code found here: http://neonscience.github.io/neon-data-institute-2016//R/open-NEON-hdf5-functions/ Contact the National Ecological Observatory Network (NEON) to download the comparable imagery data files for all sites and collections: https://data.neonscience.org/home.

Files

CNN_LABELS_2019.zip

Files (17.1 GB)

Name Size Download all
md5:cd47bc6b75f674a9fde56536cf4f3996
302.3 kB Preview Download
md5:ae3b3df9970b49b6523e608759bc957d
5 Bytes Download
md5:154608e331495a1d4b78dbbf6178a336
11.5 kB Download
md5:91faad560efe79cfac796ce48b289b45
403 Bytes Download
md5:7396a055c52e0498819501a4eac3ee15
7.2 kB Download
md5:0a30d4dff47b380912b05adb618af470
532 Bytes Download
md5:956e78cc3e8e46715cd8b6813627c1ca
462.1 kB Download
md5:fe8a57215bd3669ae46b2947eb424253
17.8 kB Preview Download
md5:a9fb286779acee2b88816e29fccefd1d
5.8 kB Download
md5:63ee0d65be0e9acaf7a9d3d4b077231e
9.6 GB Preview Download
md5:406e22158f789ae3670f004d71a83fe1
7.4 kB Preview Download
md5:dc0d07b092c3caedb9251657499d1227
639 Bytes Download
md5:1a198f7cbc697d13f1e2e8fe320a436e
1.6 GB Download
md5:3a189d128d457e7ddd8bb28b0d131140
5.9 GB Preview Download