Ashwin: Plug-and-Play System for Machine-Human Image Annotation

09/08/2016
by   Anand Sriraman, et al.
0

We present an end-to-end machine-human image annotation system where each component can be attached in a plug-and-play fashion. These components include Feature Extraction, Machine Classifier, Task Sampling and Crowd Consensus.

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