2021
DOI: 10.3390/rs13142678
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Improved Accuracy of Phenological Detection in Rice Breeding by Using Ensemble Models of Machine Learning Based on UAV-RGB Imagery

Abstract: Accurate and timely detection of phenology at plot scale in rice breeding trails is crucial for understanding the heterogeneity of varieties and guiding field management. Traditionally, remote sensing studies of phenology detection have heavily relied on the time-series vegetation index (VI) data. However, the methodology based on time-series VI data was often limited by the temporal resolution. In this study, three types of ensemble models including hard voting (majority voting), soft voting (weighted majorit… Show more

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Cited by 18 publications
(2 citation statements)
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“…These boundaries were used as the area of interest for assessing the resilience of MFs in LP-BG. Additionally, we calculated the precision of the mangrove data products for each phase using accuracy (Equation ( 3)) and F1 scores [40,41], as shown in Equations ( 4)-( 6) :…”
Section: Post-classification and Accuracy Assessmentmentioning
confidence: 99%
“…These boundaries were used as the area of interest for assessing the resilience of MFs in LP-BG. Additionally, we calculated the precision of the mangrove data products for each phase using accuracy (Equation ( 3)) and F1 scores [40,41], as shown in Equations ( 4)-( 6) :…”
Section: Post-classification and Accuracy Assessmentmentioning
confidence: 99%
“…The characteristics of the terrain environment, the complexity of land use types and the degree of fragmentation in different study areas necessitate machine learning combined with the phenological characteristics of rice fields to extract rice information [25,26]. However, the extraction accuracy, constraints, and difficulty of different methods vary for different projects and are heavily influenced by the specific study area.…”
Section: Data Source and Pre-processingmentioning
confidence: 99%