河岸带植被覆盖度的无人机遥感计算方法研究

Research on UAV remote sensing methods for calculating riparian vegetation coverage

  • 摘要: 河岸带植被覆盖度是评估河湖生态系统健康状况的重要指标,在维持生态系统稳定性、保护水土资源及支持生物多样性等方面发挥着重要作用。因此,在河岸带植被覆盖度监测方面,如何以高效且经济的方式达成监测目标,并提升计算精度,是当前亟待解决的重要科学问题。本研究构建了一种基于无人机遥感植被指数阈值的分类方法,通过归一化植被指数(NDVI)和可见光波段差异植被指数(VDVI),结合OTSU阈值法(大津法)、直方图熵阈值法和双峰直方图阈值法确定分类阈值,计算了南京市句容河典型河段的植被覆盖度,并评估了分类提取精度和方案可行性。结果表明,多光谱遥感反演NDVI和可见光遥感反演VDVI均可作为地物信息分类和植被覆盖度计算的有效指标。当采用NDVI作为分类依据时,结合OTSU算法、直方图熵阈值法或双峰直方图阈值法确定最佳分类阈值,在不同类型河岸带环境中均表现出优异的分类性能。三类阈值方法的总体分类精度均超过93%,Kappa系数均大于0.806,表明分类结果与实地验证数据之间具有高度一致性,充分体现了NDVI在计算河岸带植被覆盖度中的稳定性和适用性。当采用VDVI作为分类指标时,双峰直方图阈值法被验证为确定分类阈值的首选方法,尤其在高植被覆盖区域效果显著。在VDVI灰度直方图不具备明显双峰分布特征时,可选用OTSU算法作为补充方案,虽精度略有降低但仍具实用价值。在高植被覆盖条件下,采用成本较低的可见光无人机进行VDVI反演,并结合双峰直方图阈值法估算植被覆盖度,能够在保证精度的同时显著降低经济成本。

     

    Abstract: Riparian vegetation coverage is widely recognized as a crucial indicator for evaluating the health and functioning of river and lake ecosystems. It performs essential ecological functions, including stabilizing riverbanks, regulating microclimates, filtering pollutants, conserving water resources, and providing habitats for diverse species. Consequently, developing efficient and cost-effective methods to monitor riparian vegetation coverage while improving measurement precision has become a pressing scientific challenge in environmental monitoring and ecosystem management. Traditional field investigation methods, while providing accurate ground-truth data, face notable limitations such as high time costs, intensive labor requirements, and restricted spatial coverage. These constraints make them impractical for large-scale or frequent monitoring efforts. In recent years, unmanned aerial vehicle (UAV) remote sensing technology has attracted considerable attention due to its operational flexibility, high spatial resolution, cost-effectiveness, and ability to function under various weather conditions. This advancement provides innovative solutions for rapid, detailed, and repeatable vegetation assessment in riparian environments. This study developed and validated a classification methodology based on vegetation index thresholds derived from UAV remote sensing data. The research employed two vegetation indices: the widely used Normalized Difference Vegetation Index (NDVI) derived from multispectral data and the Visible-band Difference Vegetation Index (VDVI) calculated from visible spectrum data. To determine optimal classification thresholds, three automated thresholding algorithms were implemented and compared: the OTSU algorithm (Otsu's method), which maximizes between-class variance; the histogram entropy method, which applies information theory concepts; and the bimodal histogram method, which identifies the optimal separation between vegetation and non-vegetation classes. The methodology was applied to a representative section of the Jurong River in Nanjing, China, where vegetation coverage was quantitatively calculated. A comprehensive accuracy assessment was conducted to evaluate classification performance and confirm the feasibility of the proposed approach. The results demonstrated that both NDVI, derived from multispectral data, and VDVI, obtained from visible-band data, are effective and reliable indicators for feature classification and vegetation coverage estimation in riparian zones. When NDVI was used as the classification basis, all three thresholding methods (OTSU, histogram entropy, and bimodal histogram) exhibited excellent performance across diverse riparian environments. The three methods achieved remarkable consistency, with overall classification accuracy exceeding 93% and Kappa coefficients above 0.806. These results indicate strong agreement between classification outcomes and field validation data, confirming the stability and applicability of NDVI for accurately calculating riparian vegetation coverage. When VDVI was employed as the primary classification indicator, the bimodal histogram threshold method proved most effective for determining optimal thresholds, particularly in areas with dense vegetation coverage. In cases where the VDVI grayscale histogram failed to exhibit a clear bimodal distribution, the OTSU algorithm provided a viable alternative. Although this substitution produced slightly lower accuracy, it remained practically useful for vegetation monitoring. Under high-coverage conditions, combining cost-effective visible-light UAVs for VDVI data acquisition with the bimodal histogram method for coverage estimation proved especially effective. This approach sustained acceptable accuracy while significantly reducing costs, offering a practical solution for large-scale monitoring under budget constraints. This study establishes a comprehensive, efficient, and transferable methodological framework for riparian vegetation coverage estimation that successfully integrates theoretical sophistication with practical applicability. The framework effectively balances the dual demands of monitoring efficiency and measurement precision while offering significant advantages over conventional approaches. The proposed methodology not only reduces the high costs associated with traditional manual surveys but also provides reliable technical support for refined ecosystem management and dynamic environmental monitoring in riparian zones. It demonstrates considerable potential for application in large-scale ecological assessment programs and recurring monitoring initiatives where both accuracy and economic feasibility are paramount considerations.

     

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