I would like to resize and split huge (1 TB) images to 256x256 pixel tiles (Zoomify / OSM / Google Maps / XYZ schema). Images would be in BigTIFF or PSB (Large Document Format or Photoshop Big) format.

What are the available libraries which can do this? I was having a look at GDAL but it was producing quite blurry output and I couldn't set it to interpolate better. Ideally I'd be looking at a Lanczos interpolator for such task.

Are there any native Python libraries, or wrappers for C based libraries which can do this? Can the Python wrapper for imagemagick do such thing?

If no Python library is available, I'm also open for command line based tools, which I can automate using Python.

  • 1
    You could go the spark-distributed computing route, if you find nothing better. – coldspeed Jun 21 '17 at 15:40
  • 1
    ImageMagick can do that with the -crop operator. See the tile cropping section at imagemagick.org/Usage/crop/#crop. There is Python ImageMagick API and also Python Wand, I believe. – fmw42 Jun 21 '17 at 16:48
  • I would recommend you have a look at vips vips.ecs.soton.ac.uk and maybe its author, John (@user894763) will have some advice. – Mark Setchell Jun 21 '17 at 21:22
  • what format is the input image and output tiles.... In case of wavelet like MrSID limited memory during processing resolution can affect result quality. Also it could be lossy compression of output problem instead of wrong resize filter ... try to do tiles from smaller cropped image to see if it is better or not to check for this. – Spektre Jun 22 '17 at 6:39
  • @Spektre I've added the file formats to the question. – hyperknot Jun 22 '17 at 10:41
up vote 7 down vote accepted

libvips can process huge (larger than RAM) images efficiently. It's a streaming image processing library, so it can (in this case) decompress, resize, tile, and write all at the same time, and without having the whole image in memory or needing any temporary files.

The dzsave operator will write a DeepZoom / Zoomify / Google Maps pyramid. You can run it from the command-line like this:

$ vipsheader y.tif
y.tif: 104341x105144 uchar, 3 bands, srgb, tiffload
$ ls -l y.tif
-rw-r--r-- 1 john john 32912503796 Jun 13 13:31 y.tif
$ time vips dzsave y.tif x
real    3m4.944s
user    9m21.372s
sys 7m20.232s
peak RES: 640mb
$ ls -R x_files/ | wc
 227190  227172 2784853

So on my desktop it converted a 32GB image to 230,000 tiles in about 3 minutes. That's with a mechanical HDD, it might be quicker with a SSD. There's a chapter in the docs introducing dzsave.

It has a Python binding, so you could also write:

import pyvips

image = pyvips.Image.new_from_file("y.tif", access="sequential")
image.dzsave("x")

The access option tells libvips that it should stream the image. It can read BigTIFF and PSB, though you'll find the TIFF loader is a lot quicker and needs much less memory.

  • great answer! I had forgotten libvips and was already starting to think in some custom code. – jsbueno Jun 23 '17 at 10:10

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