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Linkage Projects - Grant ID: LP140100572

Title
Linkage Projects - Grant ID: LP140100572
Funding
ARC | Linkage Projects
Contract (GA) number
LP140100572
Start Date
2014/01/01
End Date
2017/12/31
Open Access mandate
no
Organizations
-
More information
http://purl.org/au-research/grants/arc/LP140100572

 

  • Deep Phenotyping: Deep Learning For Temporal Phenotype/Genotype Classification

    Najafi, Mohammad; Namin, Sarah; Esmaeilzadeh, Mohammad; Brown, Tim; Borevitz, Justin (2017)
    Projects: ARC | ARC Centres of Excellences - Grant ID: CE140100008 (CE140100008), ARC | Linkage Projects - Grant ID: LP140100572 (LP140100572)
    High resolution and high throughput, genotype to phenotype studies in plants are underway to accelerate breeding of climate ready crops. Complex developmental phenotypes are observed by imaging a variety of accessions in different environment conditions, however extracting the genetically heritable traits is challenging. In the recent years, deep learning techniques and in particular Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs) and Long-Short Term Memories (LSTMs), h...
  • No project research data found
  • Scientific Results

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    PUBLICATIONS BY ACCESS MODE

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    Publications in Repositories

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