Skip to main content

๐Ÿง‘๐Ÿฝโ€๐Ÿš’ Post-Disaster Land Cover Classification.

Project description

๐Ÿง‘๐Ÿฝโ€๐Ÿš’ palisades

๐Ÿง‘๐Ÿฝโ€๐Ÿš’ Post-disaster land Cover classification using Semantic Segmentation on Maxar Open Data acquisitions.

pip install palisades
graph LR
    palisades_ingest_target["palisades<br>ingest -<br>target=&lt;target&gt; -<br>predict"]

    palisades_ingest_query["palisades<br>ingest -<br>&lt;query-object-name&gt; -<br>predict"]

    palisades_label["palisades<br>label<br>offset=&lt;offset&gt; -<br>&lt;query-object-name&gt;"]

    palisades_train["palisades<br>train -<br>&lt;query-object-name&gt; -<br>&lt;dataset-object-name&gt; -<br>&lt;model-object-name&gt;"]

    palisades_predict["palisades<br>predict - - -<br>&lt;model-object-name&gt;<br>&lt;datacube-id&gt;<br>&lt;prediction-object-name&gt;"]

    palisades_buildings_download_footprints["palisades<br>buildings<br>download_footprints -<br>&lt;input-object-name&gt; -<br>&lt;output-object-name&gt;"]

    palisades_buildings_analyze["palisades<br>buildings<br>analyze -<br>&lt;object-name&gt;"]

    target["๐ŸŽฏ target"]:::folder
    query_object["๐Ÿ“‚ query object"]:::folder
    datacube["๐ŸงŠ datacube"]:::folder
    dataset_object["๐Ÿ›๏ธ dataset object"]:::folder
    model_object["๐Ÿ›๏ธ model object"]:::folder
    prediction_object["๐Ÿ“‚ prediction object"]:::folder

    query_object --> datacube

    target --> palisades_ingest_target
    palisades_ingest_target --> palisades_ingest_query
    palisades_ingest_target --> query_object

    query_object --> palisades_ingest_query
    palisades_ingest_query --> datacube
    palisades_ingest_query --> palisades_predict

    query_object --> palisades_label
    palisades_label --> datacube

    query_object --> palisades_train
    palisades_train --> dataset_object
    palisades_train --> model_object

    model_object --> palisades_predict
    datacube --> palisades_predict
    palisades_predict --> palisades_buildings_download_footprints
    palisades_predict --> palisades_buildings_analyze
    palisades_predict --> prediction_object

    prediction_object --> palisades_buildings_download_footprints
    palisades_buildings_download_footprints --> prediction_object

    prediction_object --> palisades_buildings_analyze
    palisades_buildings_analyze --> prediction_object

    classDef folder fill:#999,stroke:#333,stroke-width:2px;
palisades help
palisades \
	ingest \
	[~download,dryrun] \
	[target=<target> | <query-object-name>] \
	[~ingest | ~copy_template,dryrun,overwrite,scope=<scope>,upload] \
	[predict,count=<count>,~tag] \
	[device=<device>,profile=<profile>,upload] \
	[-|<model-object-name>] \
	[~download_footprints | country_code=<iso-code>,country_name=<country-name>,overwrite,source=<source>] \
	[~analyze | buffer=<buffer>,count=<count>]
 . ingest <target>.
   target: Brown-Mountain-Truck-Trail | Brown-Mountain-Truck-Trail-all | Brown-Mountain-Truck-Trail-test | Palisades-Maxar | Palisades-Maxar-test
   scope: all + metadata + raster + rgb + rgbx + <.jp2> + <.tif> + <.tiff>
      all: ALL files.
      metadata (default): any < 1 MB.
      raster: all raster.
      rgb: rgb.
      rgbx: rgb and what is needed to build rgb.
      <suffix>: any *<suffix>.
   device: cpu | cuda
   profile: FULL | DECENT | QUICK | DEBUG | VALIDATION
   country-name: for Microsoft, optional, overrides <iso-code>.
   iso-code: Country Alpha2 ISO code: https://en.wikipedia.org/wiki/List_of_ISO_3166_country_codes
      Canada: CA
      US: US
   source: microsoft | osm | google
   calls: https://github.com/microsoft/building-damage-assessment/blob/main/download_building_footprints.py
   buffer: in meters.
palisades \
	label \
	[download,offset=<offset>] \
	[~download,dryrun,~QGIS,~rasterize,~sync,upload] \
	[.|<query-object-name>]
 . label <query-object-name>.
palisades \
	train \
	[dryrun,~download,review] \
	[.|<query-object-name>] \
	[count=<10000>,dryrun,upload] \
	[-|<dataset-object-name>] \
	[device=<device>,dryrun,profile=<profile>,upload,epochs=<5>] \
	[-|<model-object-name>]
 . train palisades.
   device: cpu | cuda
   profile: FULL | DECENT | QUICK | DEBUG | VALIDATION
palisades \
	predict \
	[~tag] \
	[~ingest | ~copy_template,dryrun,overwrite,scope=<scope>,upload] \
	[device=<device>,profile=<profile>,upload] \
	[-|<model-object-name>] \
	[.|<datacube-id>] \
	[-|<prediction-object-name>] \
	[~download_footprints | country_code=<iso-code>,country_name=<country-name>,overwrite,source=<source>] \
	[~analyze | buffer=<buffer>,count=<count>]
 . <datacube-id> -<model-object-name>-> <prediction-object-name>
   device: cpu | cuda
   profile: FULL | DECENT | QUICK | DEBUG | VALIDATION
   country-name: for Microsoft, optional, overrides <iso-code>.
   iso-code: Country Alpha2 ISO code: https://en.wikipedia.org/wiki/List_of_ISO_3166_country_codes
      Canada: CA
      US: US
   source: microsoft | osm | google
   calls: https://github.com/microsoft/building-damage-assessment/blob/main/download_building_footprints.py
   buffer: in meters.
๐ŸŒSTAC Catalog: Maxar Open Data image "Satellite imagery for select sudden onset major crisis events" ๐Ÿ›๏ธVision Algo: Semantic Segmentation image segmentation_models.pytorch
๐Ÿง‘๐Ÿฝโ€๐Ÿš’Building Damage Analysis image using Microsoft, OSM, and Google footprints through microsoft/building-damage-assessment ๐Ÿง‘๐Ÿฝโ€๐Ÿš’Analytics image Damage information for multi-datacube areas.

This workflow is inspired by microsoft/building-damage-assessment and palisades buildings download_footprints calls download_building_footprints.py from the same repo - through satellite-image-deep-learning.


pylint pytest bashtest PyPI version PyPI - Downloads

built by ๐ŸŒ€ blue_options-4.197.1, based on ๐Ÿง‘๐Ÿฝโ€๐Ÿš’ palisades-4.124.1.

Project details


Download files

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

Source Distribution

palisades-4.124.1.tar.gz (23.2 kB view details)

Uploaded Source

Built Distribution

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

palisades-4.124.1-py3-none-any.whl (30.9 kB view details)

Uploaded Python 3

File details

Details for the file palisades-4.124.1.tar.gz.

File metadata

  • Download URL: palisades-4.124.1.tar.gz
  • Upload date:
  • Size: 23.2 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/5.1.1 CPython/3.12.7

File hashes

Hashes for palisades-4.124.1.tar.gz
Algorithm Hash digest
SHA256 85f20e1e0c3b719d50a5855777665bddfb17fc0460efd96971b47cca9fe773c8
MD5 df2b7e37e6cc6d94106f6d1a47ddbeba
BLAKE2b-256 2e66ed0c51a7070cd43f2d0eeb86d3f29535543ef3778475e2a282d6d7beb057

See more details on using hashes here.

File details

Details for the file palisades-4.124.1-py3-none-any.whl.

File metadata

  • Download URL: palisades-4.124.1-py3-none-any.whl
  • Upload date:
  • Size: 30.9 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/5.1.1 CPython/3.12.7

File hashes

Hashes for palisades-4.124.1-py3-none-any.whl
Algorithm Hash digest
SHA256 9f5474845ede4bddf4e0b420ec400de15e1738bf5725b6f8005aaad754f71d07
MD5 c2068fac671dc2159bc8b9077793ed6d
BLAKE2b-256 28c4f96259b1fae810e269fdcfd0fb2f01442d4b5170dae8fa7b5a6133884e6c

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