Canopy Averaged Chlorophyll Content Prediction of Pear Trees Using Convolutional Autoencoder on Hyperspectral Data

Paul, Subir ; Poliyapram, Vinayaraj ; Imamoglu, Nevrez ; Uto, Kuniaki ; Nakamura, Ryosuke ; Kumar, D. Nagesh (2020) Canopy Averaged Chlorophyll Content Prediction of Pear Trees Using Convolutional Autoencoder on Hyperspectral Data IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 13 . pp. 1426-1437. ISSN 1939-1404

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Official URL: http://doi.org/10.1109/JSTARS.2020.2983000

Related URL: http://dx.doi.org/10.1109/JSTARS.2020.2983000

Abstract

Chlorophyll content is one of the essential parameters to assess the growth process of the fruit trees. This present study developed a model for estimation of canopy averaged chlorophyll content (CACC) of pear trees using the convolutional autoencoder (CAE) features of hyperspectral (HS) data. This study also demonstrated the inspection of anomaly among the trees by employing multidimensional scaling on the CAE features and detected outlier trees prior to fit nonlinear regression models. These outlier trees were excluded from the further experiments that helped in improving the prediction performance of CACC. Gaussian process regression (GPR) and support vector regression (SVR) techniques were investigated as nonlinear regression models and used for prediction of CACC. The CAE features were proven to be providing better prediction of CACC when compared with the direct use of HS bands or vegetation indices as predictors. The CACC prediction performance was improved with the exclusion of the outlier trees during training of the regression models. It was evident from the experiments that GPR could predict the CACC with better accuracy compared to SVR. In addition, the reliability of the tree canopy masks, which were utilized for averaging the features' values for a particular tree, was also evaluated.

Item Type:Article
Source:Copyright of this article belongs to IEEE.
Keywords:Vegetation; Feature extraction; Estimation; Indexes; Predictive models; Hyperspectral imaging
ID Code:125565
Deposited On:17 Oct 2022 06:38
Last Modified:20 Oct 2022 10:36

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