2022
DOI: 10.1109/jstars.2022.3172491
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Evaluation of Leaf Area Index (LAI) of Broadacre Crops Using UAS-Based LiDAR Point Clouds and Multispectral Imagery

Abstract: Leaf area index (LAI) is an established structural variable that reflects the 3D leaf layering of vegetation in response to environmental inputs. In this context, unmanned aerial system (UAS)-based methods present a new approach to such plant-to field-scale LAI assessment for precision agriculture applications. This study used UAS-based light detection and ranging (LiDAR) data and multispectral imagery (MSI) as two modalities to evaluate the LAI of a snap bean field, toward eventual yield modeling and disease … Show more

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Cited by 12 publications
(5 citation statements)
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“…From our results, we can find that the richer the spectral information in the data, the higher the prediction accuracy of LAI. Similar findings are present in [58][59][60], showing that the multi-hyperspectral imageryderived model outperforms the LiDAR-derived model. In all four combination experiments, the accuracy of the combination features was higher than the accuracy of their components.…”
Section: Discussionsupporting
confidence: 80%
“…From our results, we can find that the richer the spectral information in the data, the higher the prediction accuracy of LAI. Similar findings are present in [58][59][60], showing that the multi-hyperspectral imageryderived model outperforms the LiDAR-derived model. In all four combination experiments, the accuracy of the combination features was higher than the accuracy of their components.…”
Section: Discussionsupporting
confidence: 80%
“…The findings reveal that, with distribution ranges of 68.14–77.97%, 66.77–79.33%, and 78.74–89.93%, respectively, better predictions of LN, LFW, and LAI were made in terms of ATPA. These benefits of RF models are primarily attributable to the incorporation of multiple ML algorithms (such as bootstrap aggregation and random variable selection), which reduce overfitting and autocorrelation of the input variables [ 42 ] and generally have no negative impact on the model when more input variables are added [ 50 ]. As a result, the RF model has strong generalizability [ 48 ] and the highest prediction accuracy.…”
Section: Discussionmentioning
confidence: 99%
“…The ndings reveal that, with distribution ranges of 68.14-77.97%, 66.77-79.33%, and 78.74-89.93%, respectively, better predictions of LN, LFW, and LAI were made in terms of ATPA. These bene ts of RF models are primarily attributable to the incorporation of multiple ML algorithms (such as bootstrap aggregation and random variable selection), which reduce over tting and autocorrelation of the input variables [27] and generally have no negative impact on the model when more input variables are added [37]. As a result, the RF model has strong generalizability [35] and the highest prediction accuracy.…”
Section: Performance Of the Three Modelsmentioning
confidence: 99%