Evaluation of a miniaturized NIR spectrometer for cultivar identification: The case of barley, chickpea and sorghum in Ethiopia
Abstract
Crop cultivar identification is fundamental for agricultural research, industry and policies. This paper investigates the feasibility of using visible/near infrared hyperspectral data collected with a miniaturized NIR spectrometer to identify cultivars of barley, chickpea and sorghum in the context of Ethiopia. A total of 2650 grains of barley, chickpea and sorghum cultivars were scanned using the SCIO, a recently released miniaturized NIR spectrometer. The effects of data preprocessing techniques and choosing a machine learning algorithm on distinguishing cultivars are further evaluated. Predictive multiclass models of 24 barley cultivars, 19 chickpea cultivars and 10 sorghum cultivars delivered an accuracy of 89%, 96% and 87% on hold-out sample. The Support Vector Machine (SVM) and Partial least squares discriminant analysis (PLS-DA) algorithms consistently outperformed other algorithms. Several cultivars, believed to be widely adopted in Ethiopia, were identified with perfect accuracy. These results advance the discussion on cultivar identification survey methods by demonstrating that miniaturized NIR spectrometers represent a low-cost, rapid and viable tool. We further discuss the potential utility of the method for adoption surveys, field-scale agronomic studies, socio-economic impact assessments and value chain quality control. Finally, we provide a free tool for R to easily carry out crop cultivar identification and measure uncertainty based on spectral data.</div- Dataset
- Dataset
- Biotechnology
- Science Policy
- Plant Biology
- Environmental Sciences not elsewhere classified
- Biological Sciences not elsewhere classified
- Chemical Sciences not elsewhere classified
- Information Systems not elsewhere classified
- PLS-DA
- SVM
- 10 sorghum cultivars
- 24 barley cultivars
- data preprocessing techniques
- Support Vector Machine
- squares discriminant analysis
- crop cultivar identification
- 19 chickpea cultivars
- Ethiopia Crop cultivar identification
- field-scale agronomic studies
- Predictive multiclass models
- cultivar identification survey methods
- NIR spectrometer
- value chain quality control
- SCIO