Skip to main content

Python modules to work with large, multiresolution images.

Project description

Large Image

Build Status codecov.io License doi-badge pypi-badge

Python modules to work with large, multiresolution images.

Large Image is developed and maintained by the Data & Analytics group at Kitware, Inc. for processing large geospatial and medical images. This provides the backbone for several of our image analysis platforms including Resonant GeoData, HistomicsUI, and the Digital Slide Archive.

Highlights

  • Tile serving made easy

  • Supports a wide variety of geospatial and medical image formats

  • Convert to tiled Cloud Optimized (Geo)Tiffs (also known as pyramidal tiffs)

  • Python methods for retiling or accessing regions of images efficiently

  • Options for restyling tiles, such as dynamically applying color and band transform

Installation

In addition to installing the large-image package, you’ll need at least one tile source (a large-image-source-xxx package). You can install everything from the main project with one of these commands:

Pip

Install all tile sources on linux:

pip install large-image[all] --find-links https://girder.github.io/large_image_wheels

Install all tile sources and all Girder plugins on linux:

pip install large-image[all] girder-large-image-annotation[tasks] --find-links https://girder.github.io/large_image_wheels

Conda

Conda makes dependency management a bit easier if not on Linux. Some of the source modules are available on conda-forge. You can install the following:

conda install -c conda-forge large-image-source-gdal
conda install -c conda-forge large-image-source-tiff
conda install -c conda-forge large-image-converter

Docker Image

Included in this repository’s packages is a pre-built Docker image that has all of the dependencies to read any supported image format.

This is particularly useful if you do not want to install some of the heavier dependencies like GDAL on your system or want a dedicated and isolated environment for working with large images.

To use, pull the image and run it by mounting a local volume where the imagery is stored:

docker pull ghcr.io/girder/large_image:latest
docker run -v /path/to/images:/opt/images ghcr.io/girder/large_image:latest

Modules

Large Image consists of several Python modules designed to work together. These include:

  • large-image: The core module.

    You can specify extras_require of the name of any tile source included with this repository. For instance, you can do pip install large-image[tiff]. There are additional extras_require options:

    • sources: all of the tile sources in the repository, a specific source name (e.g., tiff)

    • memcached: use memcached for tile caching

    • converter: include the converter module

    • colormaps: use matplotlib for named color palettes used in styles

    • tiledoutput: support for emitting large regions as tiled tiffs

    • performance: include optional modules that can improve performance

    • all: for all of the above

  • large-image-converter: A utility for using pyvips and other libraries to convert images into pyramidal tiff files that can be read efficiently by large_image. You can specify extras_require of jp2k to include modules to allow output to JPEG2000 compression, sources to include all sources, and stats to include modules to allow computing compression noise statistics.

  • Tile sources:

    • large-image-source-tiff: A tile source for reading pyramidal tiff files in common compression formats.

    • large-image-source-openslide: A tile source using the OpenSlide library. This works with svs, ndpi, Mirax, tiff, vms, and other file formats.

    • large-image-source-ometiff: A tile source using the tiff library that can handle some multi-frame OMETiff files.

    • large-image-source-pil: A tile source for small images via the Python Imaging Library (Pillow).

    • large-image-source-gdal: A tile source for reading geotiff files via GDAL. This handles source data with more complex transforms than the mapnik tile source.

    • large-image-source-mapnik: A tile source for reading geotiff and netcdf files via Mapnik and GDAL. This handles more vector issues than the gdal tile source.

    • large-image-source-openjpeg: A tile source using the Glymur library to read jp2 (JPEG 2000) files.

    • large-image-source-nd2: A tile source for reading nd2 (NIS Element) images.

    • large-image-source-bioformats: A tile source for reading any file handled by the Java Bioformats library.

    • large-image-source-deepzoom: A tile source for reading Deepzoom tiles.

    • large-image-source-multi: A tile source for compositing other tile sources into a single multi-frame source.

    • large-image-source-vips: A tile source for reading any files handled by libvips. This also can be used for writing tiled images from numpy arrays.

    • large-image-source-tifffile: A tile source using the tifffile library that can handle a wide variety of tiff-like files.

    • large-image-source-test: A tile source that generates test tiles, including a simple fractal pattern. Useful for testing extreme zoom levels.

    • large-image-source-dummy: A tile source that does nothing.

    Most tile sources can be used with girder-large-image. You can specific an extras_require of girder to include girder-large-image with the source.

  • As a Girder plugin:

    • girder-large-image: Large Image as a Girder 3.x plugin. You can specify extras_require of tasks to install a Girder Worker task that can convert otherwise unreadable images to pyramidal tiff files.

    • girder-large-image-annotation: Annotations for large images as a Girder 3.x plugin.

    • large-image-tasks: A utility for running the converter via Girder Worker. You can specify an extras_require of girder to include modules needed to work with the Girder remote worker or worker to include modules needed on the remote side of the Girder remote worker. If neither is specified, some conversion tasks can be run using Girder local jobs.

Developer Installation

To install all packages from source, clone the repository:

git clone https://github.com/girder/large_image.git
cd large_image

Install all packages and dependencies:

pip install -e . -r requirements-dev.txt

If you aren’t developing with Girder 3, you can skip installing those components. Use requirements-dev-core.txt instead of requirements-dev.txt:

pip install -e . -r requirements-dev-core.txt

Tile source prerequisites

Many tile sources have complex prerequisites. These can be installed directly using your system’s package manager or from some prebuilt Python wheels for Linux. The prebuilt wheels are not official packages, but they can be used by instructing pip to use them by preference:

pip install -e . -r requirements-dev.txt --find-links https://girder.github.io/large_image_wheels

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

large-image-1.16.2.dev13.tar.gz (72.3 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

large_image-1.16.2.dev13-py3-none-any.whl (63.0 kB view details)

Uploaded Python 3

File details

Details for the file large-image-1.16.2.dev13.tar.gz.

File metadata

  • Download URL: large-image-1.16.2.dev13.tar.gz
  • Upload date:
  • Size: 72.3 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.1 CPython/3.7.12

File hashes

Hashes for large-image-1.16.2.dev13.tar.gz
Algorithm Hash digest
SHA256 97ef4d46970b3887b8b92c9d446d5256fb08be52276682797b69af9ab9cf9485
MD5 4607f9a7f12e1832d5ccb08508102e23
BLAKE2b-256 a32ad739359becc837f772e75852c6abdd6b3435068ce51674fffd34aacd7da6

See more details on using hashes here.

File details

Details for the file large_image-1.16.2.dev13-py3-none-any.whl.

File metadata

File hashes

Hashes for large_image-1.16.2.dev13-py3-none-any.whl
Algorithm Hash digest
SHA256 4ea2384338890e141556fd19dd37e6808c1d741a69c4095e1f4a14ba8943d9c5
MD5 4917523b529a201687d8f7788c3670b0
BLAKE2b-256 0b27ef9f5b4226a109de1bbedf9efa93918d66712b56d385dc5ccbd369d8ff57

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page