Yield Prediction of Chinese Cabbage (Brassica rapa var. glabra Regel.) using Narrowband Hyperspectral Imagery and Effective Accumulated TemperatureYield Prediction of Chinese Cabbage (Brassica rapa var. glabra Regel.) using Narrowband Hyperspectral Imagery and Effective Accumulated Temperature
- Other Titles
- Yield Prediction of Chinese Cabbage (Brassica rapa var. glabra Regel.) using Narrowband Hyperspectral Imagery and Effective Accumulated Temperature
- Authors
- 강예성; 전새롬; 장시형; 박준욱; 송혜영; 류찬석
- Issue Date
- 2020
- Publisher
- 경상국립대학교 농업생명과학연구원
- Keywords
- Chinese cabbage; Band ratio; Effective accumulated temperature; Prediction model; Hyperspectral imagery
- Citation
- 농업생명과학연구, v.54, no.3, pp 95 - 104
- Pages
- 10
- Indexed
- KCI
- Journal Title
- 농업생명과학연구
- Volume
- 54
- Number
- 3
- Start Page
- 95
- End Page
- 104
- URI
- https://scholarworks.gnu.ac.kr/handle/sw.gnu/7767
- DOI
- 10.14397/jals.2020.54.3.95
- ISSN
- 1598-5504
2383-8272
- Abstract
- In this paper, the model for predicting yields of chinese cabbages of each cultivar (joined-up in 2015 and wrapped-up in 2016) was developed after the reflectance of hyperspectral imagery was merged as 10 nm, 25 nm and 50 nm of FWHM (full width at half maximum).
Band rationing was employed to minimize the unstable reflectance of multi-temporal hyperspectral imagery. The stepwise analysis was employed to select key band ratios to predict yields in all cultivars. The key band ratios selected for each of FWHM were used to develop the yield prediction models of chinese cabbage for all cultivars (joined-up & wrapped-up) and each cultivar (joined-up, wrapped-up). Effective accumulated temperature (EAT) was added in the models to evaluate its improvement of performances. In all models, the performance of models was improved with adding of EAT. The models with EAT for each of FWHM showed the predictability of yields in all cultivars as R2≥0.80, RMSE≤694 g/plant and RE≤28.3%. Such as this result, if the yield can be predicted regardless of the cultivar, it is considered to be advantageous when predicting the yield over a wide area because it is not require a cultivar classification work as pre-processing in imagery.
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Collections - 농업생명과학대학 > 생물산업기계공학과 > Journal Articles

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