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NAMEceleste_standalone - Cloud identification
SYNOPSISceleste_standalone [options] image1 image2 [..]
DESCRIPTIONCeleste has been trained using Support vector machine techniques to identify clouds in photos and remove control points from these areas. celeste_standalone is a command-line tool with all the same functionality as Celeste in hugin.
Simple usage is to just 'clean' an existing project file:
celeste_standalone -i project.pto -o project.pto
- -i <filename>
Input Hugin PTOfile. Control points overSVMthreshold will be removed before being written to the output file. If -m is set to 1, images in the file will be also be masked.
- -o <filename>
Output Hugin PTOfile. Default: '<filename>_celeste.pto'
- -d <filename>
SVMmodel file. Default: 'data/celeste.model'
- -s <int>
- Maximum dimension for re-sized image prior to processing. A higher value will increase the resolution of the mask but is significantly slower. Default: 800
- -t <float>
SVMthreshold. Raise this value to remove fewer control points, lower it to remove more. Range 0 to 1. Default: 0.5
- -m <1|0>
Create masks when processing Hugin PTOfile. Default: 0
- -f <string>
Mask file format. Options are PNG, JPEG, BMP, GIFandTIFF.Default:PNG
- -r <1|0>
- Filter radius. 0 = large (more accurate), 1 = small (higher resolution mask, slower, less accurate). Default: 0
- Print usage.