利用无人飞行器 (UAV) 多光谱图像,结合面向对象方法和随机森林模型进行作物分类

Hui Deng, Wenjiang Zhang, Xiaoqian Zheng, Houxi Zhang
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摘要

准确及时地识别农作物对于有效的农作物管理和产量估算至关重要。与卫星遥感相比,无人飞行器(UAV)具有更高的空间和时间分辨率,为精确识别农作物提供了一种新的解决方案。在这项研究中,我们评估了一种集成了面向对象方法和随机森林(RF)算法的方法,用于利用多光谱无人机图像识别作物。这一过程涉及多尺度分割算法,利用尺度参数估计 2(ESP2)确定的最佳分割尺度。然后,根据分割对象的光谱(SPEC)特征,结合指数(INDE)、纹理(GLCM)和几何(GEOM)特征,开发出八种分类方案(S1-S8)。通过特征选择、参数调整和模型训练三个步骤建立了最佳训练 RF 模型。随后,我们确定了不同分类方案的特征重要性,并根据最佳训练的 RF 模型生成了整个研究区域的植被预测图。结果表明,S5(SPEC + GLCM + INDE)的表现优于其他方案,总体准确率(OA)和卡帕系数分别达到 92.76% 和 0.92,令人印象深刻;而 S4(SPEC + GEOM)的表现最低。值得注意的是,几何特征对分类准确率产生了负面影响,而其他三种特征类型则对分类准确率产生了积极影响。在大多数方案中,生姜、丝瓜和红薯的准确率一直较低,这可能是由于它们独特的颜色和形状,这对仅根据光谱、指数和纹理特征进行有效分辨构成了挑战。此外,我们的研究结果表明,最关键的特征是 INDE 特征,其次是 SPEC 和 GLCM,而 GEOM 的意义最小。在最优方案(S5)中,最重要的前 20 个特征包括 10 个 SPEC、7 个 INDE 和 3 个 GLCM 特征。总之,我们提出的方法结合了基于多光谱无人机图像的面向对象算法和射频算法,对农作物的分类准确率很高。这项研究为准确识别各种农作物提供了宝贵的见解,为未来农业技术的进步和农作物管理策略的制定提供了参考。
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Crop Classification Combining Object-Oriented Method and Random Forest Model Using Unmanned Aerial Vehicle (UAV) Multispectral Image
The accurate and timely identification of crops holds paramount significance for effective crop management and yield estimation. Unmanned aerial vehicle (UAV), with their superior spatial and temporal resolution compared to satellite-based remote sensing, offer a novel solution for precise crop identification. In this study, we evaluated a methodology that integrates object-oriented method and random forest (RF) algorithm for crop identification using multispectral UAV images. The process involved a multiscale segmentation algorithm, utilizing the optimal segmentation scale determined by Estimation of Scale Parameter 2 (ESP2). Eight classification schemes (S1–S8) were then developed by incorporating index (INDE), textural (GLCM), and geometric (GEOM) features based on the spectrum (SPEC) features of segmented objects. The best-trained RF model was established through three steps: feature selection, parameter tuning, and model training. Subsequently, we determined the feature importance for different classification schemes and generated a prediction map of vegetation for the entire study area based on the best-trained RF model. Our results revealed that S5 (SPEC + GLCM + INDE) outperformed others, achieving an impressive overall accuracy (OA) and kappa coefficient of 92.76% and 0.92, respectively, whereas S4 (SPEC + GEOM) exhibited the lowest performance. Notably, geometric features negatively impacted classification accuracy, while the other three feature types positively contributed. The accuracy of ginger, luffa, and sweet potato was consistently lower across most schemes, likely due to their unique colors and shapes, posing challenges for effective discrimination based solely on spectrum, index, and texture features. Furthermore, our findings highlighted that the most crucial feature was the INDE feature, followed by SPEC and GLCM, with GEOM being the least significant. For the optimal scheme (S5), the top 20 most important features comprised 10 SPEC, 7 INDE, and 3 GLCM features. In summary, our proposed method, combining object-oriented and RF algorithms based on multispectral UAV images, demonstrated high classification accuracy for crops. This research provides valuable insights for the accurate identification of various crops, serving as a reference for future advancements in agricultural technology and crop management strategies.
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