Application of training data affects success in broad-scale local climate zone mapping

被引:13
|
作者
Xu, Chunxue [1 ]
Hystad, Perry [2 ]
Chen, Rui [3 ]
Van Den Hoek, Jamon [1 ]
Hutchinson, Rebecca A. [4 ,5 ]
Hankey, Steve [6 ]
Kennedy, Robert [1 ]
机构
[1] Oregon State Univ, Coll Earth Ocean & Atmospher Sci, Corvallis, OR 97331 USA
[2] Oregon State Univ, Coll Publ Hlth & Human Sci, Corvallis, OR 97331 USA
[3] Tufts Univ, Dept Comp Sci, Medford, MA 02155 USA
[4] Oregon State Univ, Sch Elect Engn & Comp Sci, Corvallis, OR 97331 USA
[5] Oregon State Univ, Dept Fisheries Wildlife & Conservat Sci, Corvallis, OR 97331 USA
[6] VA Tech, Sch Publ & Int Affairs, Blacksburg, VA USA
关键词
Local climate zone; Machine learning; Training areas; Crowdsourced data; Spatial autocorrelation; DIFFERENCE WATER INDEX; SENTINEL-2; IMAGES; CROSS-VALIDATION; CLASSIFICATION; FOREST; NDWI;
D O I
10.1016/j.jag.2021.102482
中图分类号
TP7 [遥感技术];
学科分类号
081102 ; 0816 ; 081602 ; 083002 ; 1404 ;
摘要
Satellite imagery has been widely used to map urbanization processes. To address the urgent need for urban landscape mapping that goes beyond urban footprint analysis, the local climate zone (LCZ) scheme has been increasingly used to reveal the urban forms and functions important to urban heat islands and micro-climates across the globe. As with most supervised classification strategies, proper application of training data is critical for the success of LCZ classification models. However, the collection and application of LCZ training areas brings with it two challenges that may affect mapping success. First, because digitizing training areas is a timeconsuming task, there is a broad effort in the LCZ mapping community to create a crowdsourced data collection among different experts. However, this strategy likely leads to inconsistencies in labels that could weaken models. Second, the LCZ labeling process typically involves the delineation of large zones from which multiple training samples are drawn, but those samples are likely spatially autocorrelated and lead to overly optimistic estimates of model accuracy. Although both effects - inconsistent labeling and spatial autocorrelation - are theoretically possible, it is unknown whether they substantially affect accuracy. We investigated both issues, specifically asking: (i) how do the discrepancies of LCZ labeling by different experts impact broad-scale LCZ mapping? (ii) to what extent does spatial correlation affect model prediction power? We used two classifiers (Random Forests and ResNets) to map eight metropolitan areas in the US into LCZs, comparing training areas drawn by different or consistent interpreters, and data splitting strategy using rules that allow or reduce spatial autocorrelation. We found large discrepancies among results built from crowdsourced training areas digitized by different experts; improving the consistency of labels can lead to substantial improvements in LCZ classification accuracy. Second, we found that spatial autocorrelation can boost the apparent accuracy of the classifier by 16% to 21%, leading to erroneous interpretation of mapping results. The two effects interplay as well: spatial auto correlation in the raw data can lead to an underestimation of the model's predictive error when modeling with crowdsourced training areas of high inconsistency. Due to the uncertainty in the labeling process and spatial autocorrelation in derived training data, broad-scale LCZ mapping results should be interpreted with caution.
引用
收藏
页数:13
相关论文
共 50 条
  • [31] Metric Distribution to Vector: Constructing Data Representation via Broad-Scale Discrepancies
    Liu, Xue
    Sun, Dan
    Cao, Xiaobo
    Ye, Hao
    Wei, Wei
    IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2024, 36 (08) : 4034 - 4049
  • [32] Estimating the movements of terrestrial animal populations using broad-scale occurrence data
    Supp, Sarah R.
    Bohrer, Gil
    Fieberg, John
    La Sorte, Frank A.
    MOVEMENT ECOLOGY, 2021, 9 (01)
  • [33] Broad-scale species distribution models applied to data-poor areas
    Guillaumot, Charlene
    Artois, Jean
    Saucede, Thomas
    Demoustier, Laura
    Moreau, Camille
    Eleaume, Marc
    Aguera, Antonio
    Danis, Bruno
    PROGRESS IN OCEANOGRAPHY, 2019, 175 : 198 - 207
  • [34] Climate calibration of the Spring Index model for more accurate broad-scale first leaf predictions
    Liang, Liang
    CLIMATE RESEARCH, 2023, 89 : 99 - 112
  • [35] Fine-grained urban landscape mapping reveals broad-scale homogeneity in urban environments
    Xu, Zhiyu
    Zhao, Shuqing
    SCIENCE BULLETIN, 2024, 69 (12) : 1802 - 1805
  • [36] Historical biogeography of two alpine butterflies in the Rocky Mountains: broad-scale concordance and local-scale discordance
    DeChaine, EG
    Martin, AP
    JOURNAL OF BIOGEOGRAPHY, 2005, 32 (11) : 1943 - 1956
  • [37] Review of broad-scale drought monitoring of forests: Toward an integrated data mining approach
    Norman, Steven P.
    Koch, Frank H.
    Hargrove, William W.
    FOREST ECOLOGY AND MANAGEMENT, 2016, 380 : 346 - 358
  • [38] Use of Landsat and SRTM Data to Detect Broad-Scale Biodiversity Patterns in Northwestern Amazonia
    Higgins, Mark A.
    Asner, Gregory P.
    Perez, Eneas
    Elespuru, Nydia
    Tuomisto, Hanna
    Ruokolainen, Kalle
    Alonso, Alfonso
    REMOTE SENSING, 2012, 4 (08): : 2401 - 2418
  • [39] Finer soil properties mapping framework for broad-scale area: A case study of Hubei Province, China
    Wang, Ruizhen
    Chen, Weitao
    Chen, Hao
    Qin, Xuwen
    GEODERMA, 2024, 449
  • [40] Synergistic effects of climate and land-use change influence broad-scale avian population declines
    Northrup, Joseph M.
    Rivers, James W.
    Yang, Zhiqiang
    Betts, Matthew G.
    GLOBAL CHANGE BIOLOGY, 2019, 25 (05) : 1561 - 1575