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基于成像切片连续性的异质森林冠层病虫害光谱识别技术

Spectral recognition technology for heterogeneous forest canopies with diseases and pests based on imaging slice continuity

  • 摘要: 异质森林中往往包含多种树种,森林冠层具有复杂的层次结构,不同层次植被对光线的反射、散射和吸收情况不同,导致光谱特征具有复杂性,基于单一成像切片选取的特征波长影响病虫害识别精度。为此,提出基于成像切片连续性的异质森林冠层病虫害光谱识别技术研究。对异质森林冠层病虫害成像切片进行连续投影,根据连续成像切片集合上的投影向量绝对值,迭代更新波长,选取覆盖连续成像切片的特征波长;利用投影向量最大的前N个特征波长,计算扩展比值光谱指数,映射到异质森林冠层病虫害图像的拉姆角场中。基于映射结果采用基于几何−代数混合模型的冠层光谱反演框架(GAFS)逆推生成异质森林冠层病虫害光谱分布信息,完成异质森林冠层病虫害光谱识别。测试结果表明,该方法在识别精度方面表现较好,迭代次数达到15次后,Kappa系数稳定在0.6以上,识别具有稳定性。

     

    Abstract: Heterogeneous forests often contain multiple tree species, with complex hierarchical structure in their canopy layers.Different vegetation level exhibit varying reflections, scatterings, and absorptions of light, resulting in complex spectral features.Feature wavelengths selected based on a single imaging slice affect disease and pest identification accuracy.Therefore, a spectral identification technology for heterogeneous forest canopies diseases and pests based on imaging slice continuity was proposed.Continuous projection of imaging slices for heterogeneous forest canopies diseases and pests was performed.Based on absolute values of projection vectors across continuous imaging slices set, wavelengths were iteratively updated to select feature wavelengths covering continuous imaging slices.Using top N feature wavelengths with the largest projection vector, extended ratio spectral indexes were calculated and mapped to Lambe angle field of heterogeneous forest canopies disease and pest images.Based on mapping results, GAFS was used to generate spectral distribution information of heterogeneous forest canopies diseases and pests through inverse inference, completing spectral recognition.Test results indicated that design method performed well in recognition accuracy, and, with Kappa value remaining stable above 0.6 after 15 iterations, indicating recognition stability.

     

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