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New AI tool used to boost computer vision efficiency, for use in smart agriculture

Andrew Leakey, professor of plant biology and crop sciences at the University of Illinois and director of CABBI

Andrew Leakey, professor of plant biology and crop sciences at the University of Illinois and director of CABBI (Image: Craig Pressman / University of Illinois Urbana-Champaign)

A new AI method, developed at the University of Illinois, aims to cuts the annotated image requirements of crop-breeding computer vision systems

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