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LIDAR data delivery ¶
Once the data has been processed, it needs to be put into a delivery directory. This is the final file structure in which it will be sent to the customer.
What should be included ¶
- ASCII LIDAR point cloud data
- LAS point cloud data
- pdf version of flight logsheet
- readme file describing the data set + copyright notice
- screenshot of mosaic of all lines (full resolution) and zoomed image with vector overlay
- data quality report and further processing scripts
- DEM of the LIDAR data - usually gridded to 2m resolution.
- Screenshot of DEM
For full waveform deliveries the following should also be included:
- Discrete LAS files
- Full waveform LAS files
- Navigation data (.sol file and .trj file)
- ASCII full waveform extractions - if requested by the PI
Procedure for creating a LIDAR data set delivery ¶
Semi-scripted method ¶
- Create the delivery directory using make_lidar_delivery.py (run make_lidar_delivery -h for details). The .LAS files that have been QC'ed and classified for noisy points should be in processing/als50/las-classified. Check it's created everything correctly. If it fails, create the directory manually as per below.
- If you did not create the DEM and screenshots using the above script (-m option) then create them manually using make_lidardem_or_intensity.sh?.
- Generate the readme file.
- Create a config file for the read me using the generate_readme_config.py script. Use a command such as generate_readme_config.py -d <delivery_directory> -r lidar
- Edit the config file and check all the items are filled in:
- Any remarks about the data should be entered as a sentence in the "data_quality_remarks" section.
- If vectors have been used then the accuracy should be entered in "vectors" (e.g. '5-10' if they're within 5m to 10m)
- line_numbering should contain a space separated list of line names linking the logsheet to the processed files.
- las_files should contain the path to the processed LAS file in order to extract the per flightline statistics
- elevation_difference should contain a list of the elevation differences between overlapping flightlines. Enter the lines numbers and the difference in cm followed by a semicolon e.g 001 002 5; 002 003 4.5; etc...
- All "compulsory" items should contain data
- Create a TeX file. Use the script create_latex_lidar_readme.py -f <config filename>
- This file can be reviewed and edited in any text editor if needed
- Create a PDF file by running latex <tex_filename>
- Review the read me and check carefully to see if it looks OK with all relevant information present
- Copy it to the delivery directory and remove any temporary files. Recommended to keep the TeX file until after delivery checking in case any edits are required
Manual Method ¶
- Copy the template directory over to the project directory. Template directory at ~arsf/arsf_data/2011/delivery/lidar/template
- Move the processed data to the delivery directory
- Move the LAS binary files into delivery/flightlines/las1.0
- REMEMBER THAT THESE LAS FILES SHOULD HAVE BEEN QC'ED AND CLASSIFIED FOR NOISY POINTS
- Rename the files in the convention "LDR-PPPP_PP-yyyydddfnn.txt" (details in readme).
- run las2txt.sh <delivery/flightlines/las1.0> <delivery/flightlines/ascii>
- OR run las2txt --parse txyzicrna <lidarfilename> <outputfilename> for each file, outputting to the ascii_laser directory (may not work with LAS 1.1).
- You need to create a DEM from the lidar data to include with the delivery. Use make_lidardem_or_intensity.sh? and put the output file in a directory named 'dem'. Noisy points (those with classification 7) should not be included in the DEM so remember to specify the -C option.
- Include a pdf version of the flight logsheet with the delivery
- Make sure correct upto date data quality report (pdf version) is included in docs directory
- Create full resolution JPGs of mosaic of all the LIDAR lines by intensity, a separate one of the intensity with vectors overlaid (if vectors are available) and one of the dem and put in screenshot directory (with make_lidardem_or_intensity.sh?).
- Generate the readme using as per point 3 above
*Note: Be sure that all the files outputted in the above steps conform to the file name formats specified here
Additional Steps for Full Waveform Deliveries ¶
Create the following folders in the delivery directory:
- discrete_laser - containing two folders; ascii_files & LAS_files
- discrete_laser/ascii_files - move the ascii_laser folder to discrete_laser/ascii_files
- discrete_laser/LAS_files - move the discrete LAS files to here - naming convention LDR-PPPP_PP-yyyydddfnn.LAS
- fw_laser - move the full waveform LAS files to here - naming convention LDR-FW-PPPP_PP-yyyydddfnn.LAS
- navigation - copy the .sol file and .trj file to here - naming convention PPPP_PP-yyyy-dddf.*
- fw_extractions - this should contain the following information
- A folder for each requested area containing the relevant ASCII extractions
- A text file describing the information given in the ASCII files. Template in ~arsf/arsf_data/2010/delivery/lidar/template/fw_extractions/extractions.txt. Use summarise_area.py to extract the extents for each area to enter into readme. Naming convention PPPP_PP-yyyy-dddf_extractions.txt
- A jpg showing the location of the areas on an intensity image. Naming convention PPPP_PP-yyyy-dddf_extractions.jpg
The Read_me will need to be edited to include the above information. A template of the full waveform readme can be found at ~arsf/arsf_data/2010/delivery/lidar/template/fw_readme.txt
If you have hyperspectral data to make into a delivery, go to the hyperspectral delivery page.
If not, or if you've done that already, the delivery is ready for checking.