AutoOLA: automatic object level augmentation for wheat spikes counting

From National Research Council Canada

DOIResolve DOI: https://doi.org/10.1016/j.compag.2023.107623
AuthorSearch for: ; Search for: ORCID identifier: https://orcid.org/0000-0002-7241-3483; Search for: 1; Search for: 2; Search for: ; Search for:
Affiliation
  1. National Research Council of Canada. Advanced Electronics and Photonics
  2. National Research Council of Canada. Aquatic and Crop Resource Development
FormatText, Article
Subjectobject-level augmentation; optimized augmentation; wheat spike counting; high-throughput phenotyping; yield estimation; computer vision; deep learning
Abstract
Publication date
PublisherElsevier
In
LanguageEnglish
Peer reviewedYes
IdentifierS016816992300011X
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Record identifier1f8d09ab-0509-4889-a4be-2ca31af03bf5
Record created2023-07-28
Record modified2023-07-28
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