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首页> 外文期刊>Forestry >Estimating stand density, biomass and tree species from very high resolution stereo-imagery - towards an all-in-one sensor for forestry applications?
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Estimating stand density, biomass and tree species from very high resolution stereo-imagery - towards an all-in-one sensor for forestry applications?

机译:从非常高分辨率立体图像估算站立密度,生物量和树种 - 朝向林业应用的一体化传感器?

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摘要

The estimation of various forest inventory attributes from high spatial resolution airborne remote sensing data has been widely examined and proved to be successful at the experimental level. Nevertheless, the operational use of these data in automated procedures to support forest inventories and forest management is still limited to a small number of cases. The reasons for this are high data costs, limited availability of remote sensing data over large areas and resistance from practitioners. In this review the main aim is to stimulate debate about spaceborne very high resolution stereo-imagery (VHRSI) as an alternative to airborne remote sensing data by presenting: (1) a case study on the retrieval of stand density, aboveground biomass and tree species using a set of easy-to-calculate variables obtained from VHRSI data combined with image processing and nonparametric classification and modelling approaches; and (2) the results of an expert opinion survey on the potential of VHRSI as compared with Light Detection and Ranging (LiDAR), hyperspectral and airborne digital imagery to derive a range of forest inventory attributes. In the case study, stand density was estimated with r(2) = 0.71 and RMSE = 156 trees (rel./norm. RMSE = 24.9 per cent/12.4 per cent), biomass with r(2) = 0.64 and RMSE of 36.7 t/ha (rel./norm. RMSE = 20.0 per cent/12.8 per cent) while tree species classifications with five species reached overall accuracies of 84.2 per cent (kappa = 0.81). These results were comparable to earlier studies in the same test site, obtained with more expensive airborne acquisitions. Expert opinions were more diverse for VHRSI and aerial photographs (Shannon index values of 0.94 and 0.97) than for LiDAR and hyperspectral data (Shannon index values 0.69 and 0.88). In our opinion, this reflects the current state-of-the-art in the application of VHRSI for automatically retrieving forest inventory attributes. The number of studies using these data is still limited, and the full potential of these datasets is not yet completely explored. Compared with LiDAR and hyperspectral data, which both mostly received high scores for forest inventory products matching the sensor systems' strengths, VHRSI and aerial photographs received more homogeneous scores indicating their potential as multi-purpose instruments to collect forest inventory information. In summary, considering the simpler acquisition, reasonable price and the comparably easy data format and handling of VHRSI compared with other sensor types, we recommend further research on the application of these data for supporting operational forest inventories.
机译:从高空间分辨率空气传播遥感数据的估计已被广泛检查并证明在实验水平中成功。尽管如此,这些数据在自动化程序中使用这些数据来支持森林库存和森林管理仍然限于少数案例。这是对高数据成本的原因,遥感数据的可用性限制在大面积上和从业者的阻力。在这篇审查中,主要目的是通过展示:(1)通过展示空气传播遥感数据的替代方向空间发球非常高分辨率立体图像(VHRSI)的辩论使用从VHRSI数据获得的一组易于计算的变量以及图像处理和非参数分类和建模方法; (2)与光检测和测距(LIDAR),高光谱和空气传输数字图像相比,vHRSI潜力的专家舆论调查结果,以获得一系列森林库存属性。在案例研究中,用R(2)= 0.71和RMSE = 156棵树(Rel./norm)估计支架密度(Rel./norm。Rmse = 24.9%/ 12.4%),R(2)= 0.64和36.7的RMSE T / HA(Rel./norm。RMSE = 20.0%/ 12.8%),而树种种类的分类为五种物种达到84.2%的整体准确性(Kappa = 0.81)。这些结果与同一试验部位的早期研究相当,通过更昂贵的空中收购获得。 VHRSI和空中照片(Shannon指数值为0.94和0.97)的专家意见比LIDAR和Hyperspectral数据(Shannon指数值为0.69和0.88)更多样化。在我们看来,这反映了当前的最先进,在vhrsi自动检索森林库存属性时。使用这些数据的研究数量仍然有限,并且尚未完全探索这些数据集的全部潜力。与LIDAR和超光谱数据相比,这两者都主要接受森林库存产品的高分,符合传感器系统的优势,VHRSI和空中照片接受了更加均匀的分数,表明它们作为收集森林库存信息的多用途仪器的潜力。总之,考虑到更简单的采集,合理的价格和与其他传感器类型相比的VHRSI的相对简单的数据格式和处理,我们建议进一步研究这些数据的应用,以支持运营森林库存。

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  • 来源
    《Forestry》 |2017年第5期|共19页
  • 作者单位

    Karlsruhe Inst Technol Inst Geog &

    Geoecol Reinhard Baumeister Pl 1 D-76131 Karlsruhe Germany;

    Karlsruhe Inst Technol Inst Geog &

    Geoecol Reinhard Baumeister Pl 1 D-76131 Karlsruhe Germany;

    Karlsruhe Inst Technol Inst Geog &

    Geoecol Reinhard Baumeister Pl 1 D-76131 Karlsruhe Germany;

    Univ Nat Resources &

    Life Sci Inst Surveying Remote Sensing &

    Land Informat IVF Vienna BOKU Peter Jordan Str 82 A-1190 Vienna Austria;

    Karlsruhe Inst Technol Inst Geog &

    Geoecol Reinhard Baumeister Pl 1 D-76131 Karlsruhe Germany;

    Univ Freiburg Remote Sensing &

    Landscape Informat Syst Tennenbacherstr 4 D-79085 Freiburg Germany;

    Univ Wurzburg German Aerosp Ctr Dept Remote Sensing Oswald Kuelpe Weg 86 D-97074 Wurzburg Germany;

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  • 正文语种 eng
  • 中图分类 林业;
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