林分尺度下树种识别:多季节遥感影像多纹理提取的有效性检验

IF 0.6 4区 环境科学与生态学 Q4 ECOLOGY
H. Liu
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引用次数: 0

摘要

. 为了评价四季影像多类型纹理特征在纯林分树种识别中的有效性,本研究利用5波段RedEdge-MX传感器采集四季遥感数据,从20个光谱波段中提取均值、方差、同质性、对比度、不相似性、熵、秒矩和相关性等8个纹理特征。采用最大似然分类和随机森林方法确定纹理提取的最佳窗口,构建树种识别中最优纹理特征集。然后,分析了这些纹理特征集及其组合在树种识别中的性能。实验结果表明,4个季节数据的8个纹理特征对纯林分树种的识别效果较好。纹理特征均值表现出最高的性能(总体准确率为88.8559%)和最差的方差(84.8180%)。与单一纹理特征相比,8个纹理特征的组合进一步提高了树种的识别准确率(92.0599%)。将8种纹理特征与光谱带和数字表面模型相结合,可以进一步提高树种的识别精度(92.7002%)。研究表明,在春、夏、秋、冬典型季节应用多类型纹理特征,充分捕捉了不同树种在不同波段和季节的差异,可用于有效识别纯林分树种
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TREE SPECIES RECOGNITION AT STANDS SCALE: VALIDITY TEST OF MULTI-TEXTURE EXTRACTED FROM MULTISEASONAL UAV-BASED IMAGERY
. In order to evaluate the effectiveness of multi-type texture features of images of four seasons in pure stand tree species recognition, this research applied 5-band RedEdge-MX sensor to collect remote sensing data of four seasons and extracted eight texture features, including mean, variance, homogeneity, contrast, dissimilarity, entropy, second moment and correlation, from 20 spectral bands. Maximum likelihood classification and random forest were adopted for the determination of the best window for texture extraction which resulted in the construction of optimal texture feature set in tree species recognition. Then, the performance of these texture feature sets along with their combinations in tree species recognition was analyzed. Experimental findings showed that the eight texture features of four seasonal data performed well in the recognition of pure stand tree species. Texture feature mean presented the highest performance (with overall accuracy of 88.8559%) and worst variance (84.8180%). The combination of eight texture features further improved the recognition accuracy of tree species (92.0599%) compared with single texture features. The recognition accuracy of tree species could be further improved by combining eight texture features with spectral band and digital surface model (92.7002%). Research showed that the application of multi-type texture features in typical seasons of spring, summer, autumn and winter fully captured the differences of various tree species in different bands and seasons, which could be applied to the effectively identify pure stand tree species
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来源期刊
Applied Ecology and Environmental Research
Applied Ecology and Environmental Research ECOLOGY-ENVIRONMENTAL SCIENCES
CiteScore
1.40
自引率
14.30%
发文量
104
审稿时长
14 months
期刊介绍: The Journal publishes original research papers and review articles. Researchers from all countries are invited to publish pure or applied ecological, environmental, biogeographical, zoological, botanical, paleontological, biometrical-biomathematical and quantitative ecological or multidisciplinary agricultural research of international interest on its pages. The focus is on topics such as: -Community, ecosystem and global ecology- Biometrics, theoretical- and quantitative ecology- Multidisciplinary agricultural and environmental research- Sustainable and organic agriculture, natural resource management- Ecological methodology, monitoring and modeling- Biodiversity and ecosystem research, microbiology, botany and zoology- Biostatistics and modeling in epidemiology, public health and veterinary- Earth history, paleontology, extinctions, biogeography, biogeochemistry- Conservation biology, environmental protection- Ecological economics, natural capital and ecosystem services- Climatology, meteorology, climate change, climate-ecology. The Journal publishes theoretical papers as well as application-oriented contributions and practical case studies. There is no bias with regard to taxon or geographical area. Purely descriptive papers (like only taxonomic lists) will not be accepted for publication.
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