A probabilistic challenge for object detection

  • Sünderhauf N
  • Dayoub F
  • Hall D
  • et al.
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Abstract

To safely operate in the real world, robots need to evaluate how confident they are about what they see. A new competition challenges computer vision algorithms to not just detect and localize objects, but also report how certain they are.

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APA

Sünderhauf, N., Dayoub, F., Hall, D., Skinner, J., Zhang, H., Carneiro, G., & Corke, P. (2019). A probabilistic challenge for object detection. Nature Machine Intelligence, 1(9), 443–443. https://doi.org/10.1038/s42256-019-0094-4

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