Kitware / dive

Media annotation and analysis tools for web and desktop. Get started at https://viame.kitware.com

Home Page:https://kitware.github.io/dive

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DIVE is a web interface for performing data management, video annotation, and running a portion of the algorithms stored within the VIAME repository. When compiled, docker instances for DIVE can be run either as local servers or online in web services. A sample instance of DIVE is running on a public server at viame.kitware.com.

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Features

  • video annotation
  • still image (and image sequence) annotation
  • deep integration with VIAME computer vision analysis tools
  • single-frame boxes, polygons, and lines
  • multi-frame bounding box tracks with interpolation
  • Automatic transcoding to support most video formats
  • Customizable labeling with text, numeric, multiple-choice attributes

Documentation

Technologies Used

DIVE uses Girder for data management and has a typical girder + girder worker + docker architecture. See docker scripts for additional details.

  • The client application is a standard @vue/cli application.
  • The job runner is built on celery and Girder Worker. Command-line executables for VIAME and FFmpeg are built inside the worker docker image.

Example Data

Input

DIVE takes two different kinds of input data, either a video file (e.g. .mpg) or an image sequence. Both types can be optionally accompanied with a CSV file containing video annotations. Example input sequences are available at https://viame.kitware.com/girder#collections.

Output

When running an algorithmic pipelines or performing manual video annotation (and saving the annotations with the save button) output CSV files are produced containing output detections. Simultaneously a detection plot of results is shown underneath each video sequence.

About

Media annotation and analysis tools for web and desktop. Get started at https://viame.kitware.com

https://kitware.github.io/dive

License:Apache License 2.0


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