Second Opinion: Supporting Last-Mile Person Identification with Crowdsourcing and Face Recognition

Authors

  • Vikram Mohanty Virginia Tech
  • Kareem Abdol-Hamid Virginia Tech
  • Courtney Ebersohl Virginia Tech
  • Kurt Luther Virginia Tech

DOI:

https://doi.org/10.1609/hcomp.v7i1.5272

Abstract

As AI-based face recognition technologies are increasingly adopted for high-stakes applications like locating suspected criminals, public concerns about the accuracy of these technologies have grown as well. These technologies often present a human expert with a shortlist of high-confidence candidate faces from which the expert must select correct match(es) while avoiding false positives, which we term the “last-mile problem.” We propose Second Opinion, a web-based software tool that employs a novel crowdsourcing workflow inspired by cognitive psychology, seed-gather-analyze, to assist experts in solving the last-mile problem. We evaluated Second Opinion with a mixed-methods lab study involving 10 experts and 300 crowd workers who collaborate to identify people in historical photos. We found that crowds can eliminate 75% of false positives from the highest-confidence candidates suggested by face recognition, and that experts were enthusiastic about using Second Opinion in their work. We also discuss broader implications for crowd–AI interaction and crowdsourced person identification.

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Published

2019-10-28

How to Cite

Mohanty, V., Abdol-Hamid, K., Ebersohl, C., & Luther, K. (2019). Second Opinion: Supporting Last-Mile Person Identification with Crowdsourcing and Face Recognition. Proceedings of the AAAI Conference on Human Computation and Crowdsourcing, 7(1), 86-96. https://doi.org/10.1609/hcomp.v7i1.5272