Liu Jikai, Zhu Yongji, Song Lijuan, Su Xiangxiang, Li Jun, Zheng Jing, Zhu Xueqing, Ren Lantian, Wang Wenhui, Li Xinwei
College of Resource and Environment, Anhui Science and Technology University, Chuzhou, Anhui, China.
Anhui Province Crop Intelligent Planting and Processing Technology Engineering Research Center, Anhui Science and Technology University, Chuzhou, Anhui, China.
Front Plant Sci. 2023 Dec 19;14:1284235. doi: 10.3389/fpls.2023.1284235. eCollection 2023.
Aboveground biomass (AGB) is a crucial physiological parameter for monitoring crop growth, assessing nutrient status, and predicting yield. Texture features (TFs) derived from remote sensing images have been proven to be crucial for estimating crops AGB, which can effectively address the issue of low accuracy in AGB estimation solely based on spectral information. TFs exhibit sensitivity to the size of the moving window and directional parameters, resulting in a substantial impact on AGB estimation. However, few studies systematically assessed the effects of moving window and directional parameters for TFs extraction on rice AGB estimation. To this end, this study used Unmanned aerial vehicles (UAVs) to acquire multispectral imagery during crucial growth stages of rice and evaluated the performance of TFs derived with different grey level co-occurrence matrix (GLCM) parameters by random forest (RF) regression model. Meanwhile, we analyzed the importance of TFs under the optimal parameter settings. The results indicated that: (1) the appropriate window size for extracting TFs varies with the growth stages of rice plant, wherein a small-scale window demonstrates advantages during the early growth stages, while the opposite holds during the later growth stages; (2) TFs derived from 45° direction represent the optimal choice for estimating rice AGB. During the four crucial growth stages, this selection improved performance in AGB estimation with R = 0.76 to 0.83 and rRMSE = 13.62% to 21.33%. Furthermore, the estimation accuracy for the entire growth season is R =0.84 and rRMSE =21.07%. However, there is no consensus regarding the selection of the worst TFs computation direction; (3) Correlation (Cor), Mean, and Homogeneity (Hom) from the first principal component image reflecting internal information of rice plant and Contrast (Con), Dissimilarity (Dis), and Second Moment (SM) from the second principal component image expressing edge texture are more important to estimate rice AGB among the whole growth stages; and (4) Considering the optimal parameters, the accuracy of texture-based AGB estimation slightly outperforms the estimation accuracy based on spectral reflectance alone. In summary, the present study can help researchers confident use of GLCM-based TFs to enhance the estimation accuracy of physiological and biochemical parameters of crops.
地上生物量(AGB)是监测作物生长、评估养分状况和预测产量的关键生理参数。从遥感图像中提取的纹理特征(TFs)已被证明对估算作物地上生物量至关重要,它能有效解决仅基于光谱信息估算地上生物量时精度较低的问题。纹理特征对移动窗口大小和方向参数表现出敏感性,这对地上生物量的估算产生重大影响。然而,很少有研究系统地评估移动窗口和方向参数对提取纹理特征以估算水稻地上生物量的影响。为此,本研究使用无人机(UAV)在水稻关键生长阶段获取多光谱图像,并通过随机森林(RF)回归模型评估不同灰度共生矩阵(GLCM)参数提取的纹理特征的性能。同时,我们分析了在最优参数设置下纹理特征的重要性。结果表明:(1)提取纹理特征的合适窗口大小随水稻植株生长阶段而变化,其中小尺度窗口在生长早期具有优势,而在后期则相反;(2)从45°方向提取的纹理特征是估算水稻地上生物量的最佳选择。在四个关键生长阶段,这种选择提高了地上生物量估算的性能,R值为0.76至0.83,相对均方根误差(rRMSE)为13.62%至21.33%。此外,整个生长季的估算精度为R = 0.84,rRMSE = 21.07%。然而,对于最差纹理特征计算方向的选择尚无共识;(3)反映水稻植株内部信息的第一主成分图像中的相关性(Cor)、均值和同质性(Hom)以及表达边缘纹理的第二主成分图像中的对比度(Con)、差异度(Dis)和二阶矩(SM)在整个生长阶段对估算水稻地上生物量更为重要;(4)考虑最优参数时,基于纹理的地上生物量估算精度略优于仅基于光谱反射率的估算精度。总之,本研究有助于研究人员自信地使用基于灰度共生矩阵的纹理特征来提高作物生理生化参数的估算精度。