Analyzing winter-wheat biochemical traits using hyperspectral remote sensing and deep learning
文献类型: 外文期刊
第一作者: Yue, Jibo
作者: Yue, Jibo;Wang, Jian;Guo, Wei;Ma, Xinming;Qiao, Hongbo;Yang, Guijun;Liu, Yang;Feng, Haikuan;Yue, Jibo;Yang, Guijun;Li, Changchun;Niu, Qinglin;Feng, Haikuan
作者机构:
关键词: Unmanned aerial vehicle; Transfer learning; Deep learning; Hyperspectral
期刊名称:COMPUTERS AND ELECTRONICS IN AGRICULTURE ( 影响因子:7.7; 五年影响因子:8.4 )
ISSN: 0168-1699
年卷期: 2024 年 222 卷
页码:
收录情况: SCI
摘要: Accurate estimation of crop leaf and canopy biochemical traits, such as leaf dry matter content (Cm), leaf equivalent water thickness (Cw), leaf area index (LAI), dry leaf biomass (DLB), leaf total water content (LW), and fresh leaf biomass (FLB), is essential for monitoring crop growth accurately. The vegetation spectral feature technique combined with statistical regression methods is widely employed for remote sensing crop biochemical traits mapping. However, the crop canopy spectral reflectance is influenced by various crop biochemical traits and uncertainties in geometric changes of light and soil background effects. Consequently, the remote-sensing estimation of crop biochemical traits is limited. A potential solution involves training a deep learning model to understand the physical relationship between crop biochemical traits and canopy spectral reflectance based on a physical radiative transfer model (RTM). The primary focus of this study is to propose a winter-wheat leaf and canopy biochemical traits analysis and mapping method based on hyperspectral remote sensing, utilizing a deep learning network for leaf area index and leaf biochemical traits deep learning network (LabTNet). This study consists of four main tasks: (1) Field-based measurements of winter-wheat spectra and biochemical traits were conducted in two growing seasons. A PROSAIL RTM was also employed to generate a simulated dataset representing comprehensive and complex winter-wheat field conditions. (2) The LabTNet deep learning model was pre-trained using the simulated spectra dataset to acquire knowledge of the physical relationship between crop biochemical traits and canopy spectral reflectance derived from the RTM. Subsequently, the model was retrained using the field-based spectra dataset from two growing seasons, employing a transfer learning technique. (3) An analysis was conducted to assess the performance of LabTNet against traditional statistical regression methods in estimating crop leaf and canopy biochemical traits. The study used the gradient-weighted class activation mapping (Grad-CAM) technique to analyze the attention regions of input spectra (454:8:950 nm, 960:10:1300 nm, 1450:10:1750 nm, 2000:10:2350 nm) by different convolutional neural network layers in LabTNet, aiming to enhance the interpretability of deep learning models. (4) Winter-wheat leaf and canopy biochemical traits (Cw, Cm, LAI, DLB, LW, and FLB) were mapped using the LabTNet deep learning model. Our research has the following conclusions: (1) Combining the RTM and deep learning techniques yields higher winter-wheat biochemical trait estimates than traditional statistical regression methods. (2) Different LabTNet deep learning model layers focus on distinct areas of canopy reflectance, corresponding to the sensitive regions for various winter-wheat biochemical traits. (3) LabTNet demonstrates similar winter-wheat leaf and canopy biochemical traits estimation performance using visible and near-infrared (VNIR) reflectance data and fullspectral (FS) range hyperspectral reflectance as inputs (Cw: R2 = 0.603-0.653, RMSE = 0.0015-0.0015 cm; Cm: R2 = 0.511-0.560, RMSE = 0.0006-0.0007 g/m2; LAI: R2 = 0.773-0.793, RMSE = 0.65-0.66 m2/m2; LW: R2 = 0.842-0.847, RMSE = 67.93-70.73 g/m2; DLB: R2 = 0.747-0.762, RMSE = 21.10-21.89 g/m2; FLB: R2 = 0.831 -0.840, RMSE = 86.26 -90.30 g/m 2 ). The combined use of UAV hyperspectral remote sensing and the LabTNet model proves effective in providing high-performance winter-wheat leaf and canopy biochemical trait maps, offering valuable insights for agricultural management.
分类号:
- 相关文献
作者其他论文 更多>>
-
An improved 3D-SwinT-CNN network to evaluate the fermentation degree of black tea
作者:Zhu, Fengle;Wang, Jian;Zhang, Yuqian;Zhao, Zhangfeng;Shi, Jiang;He, Mengzhu
关键词:Black tea fermentation; Hyperspectral imaging; 3D-SwinT-CNN; 3D convolutional neural networks; Swin transformer
-
A survey of efficient fine-tuning methods for Vision-Language Models - Prompt and Adapter
作者:Xing, Jialu;Liu, Jianping;Sun, Lulu;Chen, Xi;Gu, Xunxun;Wang, Yingfei;Liu, Jianping;Wang, Jian;Liu, Jianping
关键词:Vision-language; Computer vision; Efficient fine-tuning; Pre-training model; Prompt; Adapter
-
The Function of SD1 on Shoot Length and its Pyramiding Effect on Shoot Length and Plant Height in Rice (Oryza sativa L.)
作者:Dong, Jingfang;Ma, Yamei;Hu, Haifei;Wang, Jian;Yang, Wu;Fu, Hua;Zhang, Longting;Chen, Jiansong;Zhou, Lian;Li, Wenhui;Nie, Shuai;Zhao, Junliang;Liu, Bin;Yang, Tifeng;Zhang, Shaohong;Zhang, Longting;Liu, Ziqiang
关键词:Shoot Length; Plant Height; Causal gene; Allele Mining; Pyramiding Effect; Rice
-
Design and Performance Analysis of a Sunflower Cutting Table Based on the Principle of Manual Disk Pick-Up
作者:Li, Bin;Gao, Xiaolong;Chen, Xuegeng;Li, Bin;Liu, Yang;Wang, Shiguo;Dong, Yuncheng
关键词:harvesting machinery; seed loss; response surface analysis; parameter optimization
-
Mapping Maize Planting Densities Using Unmanned Aerial Vehicles, Multispectral Remote Sensing, and Deep Learning Technology
作者:Shen, Jianing;Hu, Jingyu;Wang, Jian;Shu, Meiyan;Guo, Wei;Qiao, Hongbo;Yue, Jibo;Wang, Qilei;Zhao, Meng;Liu, Yang;Niu, Qinglin;Niu, Qinglin
关键词:maize planting density; object detection; machine learning; vegetation index; YOLO; GLCM
-
Proline Spray Relieves the Adverse Effects of Drought on Wheat Flag Leaf Function
作者:Li, Huizhen;Liu, Yuan;Lv, Mouchao;Zhou, Xinguo;Yong, Beibei;Niu, Qinglin;Yang, Shenjiao;Li, Huizhen;Zhen, Bo
关键词:antioxidant enzyme; anatomic feature; plant growth regulators; water deficit; crop
-
Improving potato AGB estimation to mitigate phenological stage impacts through depth features from hyperspectral data
作者:Liu, Yang;Feng, Haikuan;Fan, Yiguang;Chen, Riqiang;Bian, Mingbo;Ma, Yanpeng;Li, Jingbo;Xu, Bo;Yang, Guijun;Liu, Yang;Liu, Yang;Feng, Haikuan;Yue, Jibo;Jin, Xiuliang
关键词:AGB; Hyperspectral features; Deep features; SPA; LSTM; PLSR