User Interface Wish List: Difference between revisions

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== Humans in the Loop ==
= Humans in the Loop =
 
Data transcription interfaces and elegant, carefully-considered functionality are critical to the short and long-term success of current and future specimen data capture in on-going digitization efforts of biodiversity collections.
Data transcription interfaces and elegant, carefully-considered functionality are critical to the short and long-term success of current and future specimen data capture in on-going digitization efforts of biodiversity collections.


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Known User Interface Issues: list them here.
Known User Interface Issues: list them here.
*link LABELX to Apiary and Symbiota
*link LABELX parser to Apiary and Symbiota
*figure out faster ways for image segmentation done by humans
 
Back to the [[2013 AOCR Hackathon Wiki]]

Latest revision as of 01:39, 11 January 2013

Humans in the Loop

Data transcription interfaces and elegant, carefully-considered functionality are critical to the short and long-term success of current and future specimen data capture in on-going digitization efforts of biodiversity collections.

While this first hackathon centers around the task of getting data from OCR output parsed into semantically meaningful parts for insertion into a database, the AOCR working group is acutely aware that humans-in-the-loop are critical to the efficacy of the entire effort. Whether humans begin the transcription process or clean up what algorithms insert automatically into a data record, a well thought out interface between the human and the database is essential.

Known User Interface Issues: list them here.

  • link LABELX parser to Apiary and Symbiota
  • figure out faster ways for image segmentation done by humans

Back to the 2013 AOCR Hackathon Wiki