Ensemble Hyperspectral Band Selection for Detecting Nitrogen Status in
Grape Leaves
- URL: http://arxiv.org/abs/2010.04225v2
- Date: Mon, 12 Oct 2020 01:17:28 GMT
- Title: Ensemble Hyperspectral Band Selection for Detecting Nitrogen Status in
Grape Leaves
- Authors: Ryan Omidi, Ali Moghimi, Alireza Pourreza, Mohamed El-Hadedy, Anas
Salah Eddin
- Abstract summary: This study aimed to identify the optimal set of spectral bands for nitrogen detection in grape leaves using ensemble feature selection on hyperspectral data.
The pipeline identified less than 0.45% of the bands as most informative about grape nitrogen status.
The proposed pipeline may also be used for application-specific multispectral sensor design in domains other than agriculture.
- Score: 0.22499166814992436
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The large data size and dimensionality of hyperspectral data demands complex
processing and data analysis. Multispectral data do not suffer the same
limitations, but are normally restricted to blue, green, red, red edge, and
near infrared bands. This study aimed to identify the optimal set of spectral
bands for nitrogen detection in grape leaves using ensemble feature selection
on hyperspectral data from over 3,000 leaves from 150 Flame Seedless table
grapevines. Six machine learning base rankers were included in the ensemble:
random forest, LASSO, SelectKBest, ReliefF, SVM-RFE, and chaotic crow search
algorithm (CCSA). The pipeline identified less than 0.45% of the bands as most
informative about grape nitrogen status. The selected violet, yellow-orange,
and shortwave infrared bands lie outside of the typical blue, green, red, red
edge, and near infrared bands of commercial multispectral cameras, so the
potential improvement in remote sensing of nitrogen in grapevines brought forth
by a customized multispectral sensor centered at the selected bands is
promising and worth further investigation. The proposed pipeline may also be
used for application-specific multispectral sensor design in domains other than
agriculture.
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