2021
DOI: 10.3390/rs13193976
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Maize Yield Prediction at an Early Developmental Stage Using Multispectral Images and Genotype Data for Preliminary Hybrid Selection

Abstract: Assessing crop production in the field often requires breeders to wait until the end of the season to collect yield-related measurements, limiting the pace of the breeding cycle. Early prediction of crop performance can reduce this constraint by allowing breeders more time to focus on the highest-performing varieties. Here, we present a multimodal deep learning model for predicting the performance of maize (Zea mays) at an early developmental stage, offering the potential to accelerate crop breeding. We employ… Show more

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Cited by 46 publications
(34 citation statements)
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“…A partial least squares regression (PLSR) model trained with the time-series BNDVI achieved an average accuracy of r = 0.51 for grain yield and r = 0.69-0.70 for the flowering time [36]. Danilevicz et al (2021) used multispectral VIs, genotype information, and field management data to predict maize yield of G2F breeding trails, hitting an accuracy of R 2 = 0.73 [44]. Herrmann et al (2020) assessed maize yield over 19 maize hybrids using VIs extracted from a super-spectral sensor mounted on a UAV, reaching an R 2 of 0.73 for grain yield prediction [45].…”
Section: Introductionmentioning
confidence: 99%
“…A partial least squares regression (PLSR) model trained with the time-series BNDVI achieved an average accuracy of r = 0.51 for grain yield and r = 0.69-0.70 for the flowering time [36]. Danilevicz et al (2021) used multispectral VIs, genotype information, and field management data to predict maize yield of G2F breeding trails, hitting an accuracy of R 2 = 0.73 [44]. Herrmann et al (2020) assessed maize yield over 19 maize hybrids using VIs extracted from a super-spectral sensor mounted on a UAV, reaching an R 2 of 0.73 for grain yield prediction [45].…”
Section: Introductionmentioning
confidence: 99%
“…Similarly, Ma et al., 2018 ., successfully developed a ML model to predict eight phenotypic traits among 2000 wheat individuals using 33,709 DArT (Diversity Array Technology) markers ( Ma et al., 2018 ). ML is now also being used to predict mature yield in early development using a combination of image and genotype data ( Danilevicz et al., 2021 ; Danilevicz et al., 2022 ). Recently ML models were developed for identification of core and dispensable genes in Oryza sativa L. and Brachypodium distachyon (L.) P. Beauv.…”
Section: Machine Learning and Cwrsmentioning
confidence: 99%
“…According to the suggested multimodal deep learning framework, the intermediate-level feature fusion DNN framework outperformed its input-level feature fusion DNN framework in terms of prediction accuracy, spatial adaptability, and resilience. Multimodal deep learning was employed by Danilevicz et al (2021) by integrating tab-DNN, sp-DNN, two linear layers of fusion, and ReLU. The weights from the last layers of tab-DNN and sp-DNN were combined for the fusion module input.…”
Section: Related Workmentioning
confidence: 99%