Estimation of Chemical Composition of Grass in Meadows using Hyperspectral Imaging
スポンサーリンク
概要
- 論文の詳細を見る
The chemical composition of grass is useful field information for grassland management. The objective of this study was to develop a field-scale system for estimating the chemical compositions of grass in meadows by using hyperspectral imaging. A hyperspectral imaging sensor was mounted on the roof of a vehicle, and hyperspectral images of a whole meadow field were acquired as the vehicle was driven. Models for estimating seven chemical compositions of grass (crude protein, acid detergent fiber, neutral detergent fiber, calcium, phosphorus, magnesium and potassium) were developed using multiple linear regression analysis (MLR), multi-layered neural network (MLNN) and partial least squares regression analysis (PLSR), and these estimation models were compared and discussed. An EI test to confirm the practical accuracy was conducted, and as a result, EI values ranged from 15.6 to 33.9, and the EI ranks were B or C, except for the MLNN models for Ca and P. Therefore, most of the estimation models were effective in estimating of chemical compositions. In conclusion, this study showed the possibility of field-scale estimation of the chemical compositions of grass by using the hyperspectral imaging system.
- 2008-06-30
著者
-
SUZUKI Yumiko
Graduate School of Agriculture, Hokkaido University
-
OKAMOTO Hiroshi
Research Faculty of Agriculture, Hokkaido University
-
TANAKA Katsuyuki
School of Veterinary Medicine, Kitasato University
-
KATO Wataru
Miyagi Prefectural Igu High School
-
KATAOKA Takashi
Research Faculty of Agriculture, Hokkaido University
-
Suzuki Yumiko
Graduate School Of Agriculture Hokkaido University
-
Kataoka Takashi
Research Faculty Of Agriculture Hokkaido University
-
Tanaka Katsuyuki
School Of Veterinary Medicine Kitasato University
-
Okamoto Hiroshi
Research Faculty Of Agriculture Hokkaido University
関連論文
- Hyperspectral imaging for nondestructive determination of internal qualities for oil palm (Elaeis guineensis Jacq. var. tenera)
- Potential Application of Color and Hyperspectral Images for Estimation of Weight and Ripeness of Oil Palm (Elaeis guineensis Jacq. var. tenera)
- Estimation of Chemical Composition of Grass in Meadows using Hyperspectral Imaging
- Efficient Harvesting of Japanese Blue Honeysuckle
- Field mapping of chemical composition of forage using hyperspectral imaging in a grass meadow
- Image Segmentation between Crop and Weed using Hyperspectral Imaging for Weed Detection in Soybean Field
- Machine Vision for Green Citrus Detection in Tree Images
- Photo-Generation of Solitons and Polarons in the Quasi-1-D MX Compounds
- Optical Study of Localized Exciton States in CdTe/ZnTe Superlattices
- High-Speed Planning and Reducing Memory Usage of a Precomputed Search Tree Using Pruning
- Plant classification for weed detection using hyperspectral imaging with wavelet analysis
- Mapping the spatial distribution of botanical composition and herbage mass in pastures using hyperspectral imaging