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Spatial and Spectral Hybrid Image Classification for Rice Lodging Assessment through UAV Imagery

机译:基于无人机影像的水稻倒伏评估的空间光谱混合图像分类

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Rice lodging identification relies on manual in situ assessment and often leads to a compensation dispute in agricultural disaster assessment. Therefore, this study proposes a comprehensive and efficient classification technique for agricultural lands that entails using unmanned aerial vehicle (UAV) imagery. In addition to spectral information, digital surface model (DSM) and texture information of the images was obtained through image-based modeling and texture analysis. Moreover, single feature probability (SFP) values were computed to evaluate the contribution of spectral and spatial hybrid image information to classification accuracy. The SFP results revealed that texture information was beneficial for the classification of rice and water, DSM information was valuable for lodging and tree classification, and the combination of texture and DSM information was helpful in distinguishing between artificial surface and bare land. Furthermore, a decision tree classification model incorporating SFP values yielded optimal results, with an accuracy of 96.17% and a Kappa value of 0.941, compared with that of a maximum likelihood classification model (90.76%). The rice lodging ratio in paddies at the study site was successfully identified, with three paddies being eligible for disaster relief. The study demonstrated that the proposed spatial and spectral hybrid image classification technology is a promising tool for rice lodging assessment.
机译:稻谷倒伏的鉴定依赖于人工原位评估,并经常导致农业灾害评估中的赔偿纠纷。因此,本研究提出了一种综合高效的农用土地分类技术,该技术需要使用无人机图像。除了光谱信息,还通过基于图像的建模和纹理分析获得了图像的数字表面模型(DSM)和纹理信息。此外,计算了单特征概率(SFP)值以评估光谱和空间混合图像信息对分类准确性的贡献。 SFP结果表明,纹理信息对水稻和水的分类有益,DSM信息对于倒伏和树木分类很有用,纹理和DSM信息的组合有助于区分人造表面和裸地。此外,与最大似然分类模型(90.76%)相比,结合了SFP值的决策树分类模型产生了最佳结果,其准确度为96.17%,卡伯值为0.941。在研究地点成功确定了稻谷的稻谷倒伏率,其中三个稻谷符合减灾条件。研究表明,提出的空间和光谱混合图像分类技术是水稻倒伏评估的有前途的工具。

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