融合图像特征的3种机器学习算法估算马尾松针叶床层载量OA
Estimating fuel load of Pinus massoniana coniferous layer beds using three machine learning algorithms integrated with image features
[目的]结合人工智能与图像识别技术,构建基于图像特征的机器学习预测模型,以实现针叶林地表可燃物载量的快速、客观且精准估测,为森林火灾的精细化预防与预报提供数据支撑.[方法]以贵州省典型马尾松林针叶为对象,通过设置标准地和随机样方,调查针叶床层载量实际变化范围.室内构建 30 cm×30 cm不同载量的针叶床层,各载量重复拍摄 3 次,共得到 150 张垂直图像.利用 OpenCV-Python 提取图像特征,经 Z-score 标准化和主成分分析筛选,选择 3 种机器学习算法构建针叶床层载量预测模型,并评估模型性能.[结果]1)野外实测得到针叶床层载量为 3.9~16.5 t/hm2,在提取到的不同载量床层图像的形状特征中,周长的最大值为 600 223.95,而边缘特征中边缘密度最小,为 4.11;2)8 个图像特征值均存在严重多重共线性(VIF>10);3)运用主成分分析方法,提取前 3 个主成分得分作为新的自变量,分别为 PC1、PC2 和 PC3,载量与 PC1、PC2、PC3 均呈现极显著线性关联,结果具有统计学意义,可用于构建模型;4)用训练集构建机器学习预测模型,并用测试集进行检验,得到K-近邻(KNN)模型的预测效果最优(MRE为18.64%,MAE为2.29 t/hm2,RMSE 为 3.31 t/hm2,R2 为 0.79,JSD 值为 0.005),预测值与真实值分布高度相似;随机森林回归(RFR)模型次之(MRE 为 39.03%,R2 为 0.57);多元线性回归(MLR)模型的预测效果最差.[结论]基于图像特征构建的机器学习模型用于估测针叶床层载量具有可行性,该模型克服了传统测量方法耗时长、主观性强以及精度较低等弊端,能快速且客观地估测载量,为森林地表可燃物载量研究提供了全新思路,对于森林火灾的预报及科学管理具有重要意义.
[Objective]This study combined artificial intelligence and image recognition technologies to construct a machine learning predictive model based on image features was constructed to achieve rapid,objective,and accurate estimation of surface fuel loading in coniferous forests,providing data support for refined forest fire prevention,forecasting,and related endeavors.[Method]Taking the needles of typical Pinus massoniana forests in Guizhou Province were selected as the research object.The actual variation range of fuel loading in the needle litter layer was determined through setting up sample plots and conducting random quadrat surveys.In the laboratory,needle litter layers with different fuel loading(30 cm×30 cm)were constructed,and each fuel loading was photographed three times repeatedly,resulting in a total of 150 vertically oriented images.Image features were extracted using OpenCV-Python.Following Z-score standardization and principal component analysis(PCA)for feature selection,three machine learning methods were employed to construct prediction models for needle litter layer loading,and the model performance was evaluated.[Result]1)Field measurements revealed that the fuel loading of the needle litter layer ranged from 3.9-16.5 t·hm-2.Among the shape features extracted from images of litter layers with different fuel loading,the maximum perimeter value reached 600 223.95,while the edge density in edge features was the smallest,with a value of 4.11;2)Severe multicollinearity(VIF>10)was observed among all eight image feature values;3)The first three principal component scores(PC1,PC2,and PC3),extracted via PCA,were used as new independent variables.The fuel loading showed statistically highly significant linear correlations with PC1,PC2,and PC3,indicating their suitability for model construction;4)Machine learning prediction models were constructed using the training set and validated with the testing set.The K-nearest neighbor(KNN)model achieved the best prediction performance,with a mean relative error(MRE)of 18.64%,mean absolute error(MAE)of 2.29 t·hm-2,root mean square error(RMSE)of 3.31 t·hm-2,R-squared(R2)of 0.79.Its low Jensen-Shannon divergence(JSD)value of 0.005 indicated highly similar distributions between predicted and true values.The random forest regression(RFR)model performed suboptimally(MRE=39.03%,R2=0.57),while the multiple linear regression(MLR)model yielded the worst prediction results.[Conclusion]The machine learning model constructed based on image features proved feasible for estimating the fuel loading of the needle litter layer.It overcame the drawbacks of traditional measurement methods,such as being time-consuming,subjective,and low in accuracy,achieving rapid and objective estimation of fuel loading.This approach provided a novel methodology for research on forest surface fuel loading and held significant implications for forest fire forecasting and scientific management.
张运林;何春梅;李雪;田玲玲
贵州师范学院 生物科学学院,贵州 贵阳 550018||贵州师范学院 贵州省高等学校林火生态与管理重点实验室,贵州 贵阳 550018贵州师范学院 生物科学学院,贵州 贵阳 550018||贵州师范学院 贵州省高等学校林火生态与管理重点实验室,贵州 贵阳 550018贵州师范学院 生物科学学院,贵州 贵阳 550018||贵州师范学院 贵州省高等学校林火生态与管理重点实验室,贵州 贵阳 550018东北林业大学 林学院,黑龙江 哈尔滨 150040||东北林业大学 森林生态系统可持续经营教育部重点实验室,黑龙江 哈尔滨 150040
农业科技
地表可燃物载量针叶床层图像特征值主成分分析机器学习
surface fuel loadingneedle litter layerimage feature valuesprincipal component analysismachine learning
《中南林业科技大学学报》 2026 (4)
1-9,9
贵州省高等学校智慧林火创新团队(黔教技[2023]75号)国家自然科学基金项目(32560349)贵州师范学院与东北林业大学联合培养硕士研究生专项科研基金项目(2024YJS01).
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