| Research article |
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| Quantifying the impact of dust retention on maize canopy spectral reflectance and vegetation indices in dust belt regions: A case study in southern Xinjiang, China |
MA Baodong*( ), GAO Shuxian, KANG Ting, CHE Defu, SHU Yang |
| School of Resources and Civil Engineering, Northeastern University, Shenyang 110819, China |
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Abstract Sand dust belts span approximately one-fifth of the global land surface. In these regions, dust tends to settle on vegetation surfaces, altering the observed reflectance and affecting remote sensing detections. To enhance the accuracy of maize growth monitoring in dust-affected regions, this study aims to quantify the effect of sand dust retention on maize during the tasseling stage in the Kashgar Prefecture, Xinjiang Uygur Autonomous Region, China, by analyzing changes in canopy reflectance and vegetation indices. First, field sampling was conducted to measure the key canopy structure parameters and dust retention levels of maize, and laboratory spectral measurements were performed on leaf spectral properties under gradient dust retention. The measured data were then used to drive the LargE-Scale remote sensing data and image Simulation framework (LESS) model for simulating realistic maize canopy spectra across different dust levels, with validation against Sentinel-2 imagery. Second, on the basis of the simulated and satellite-derived spectra, the dust resistance of 36 common vegetation indices was systematically evaluated, and new robust dust-resistant indices were developed. The results showed that compared with dust-free maize, the canopy reflectance of dust-retained maize followed an increase-decrease-increase pattern, with critical turning points at 735 and 1325 nm. The maximum reflectance difference of -0.11755 (change rate: 29.002%) occurred within the 735-1325 nm range at 24 g/m2 dust retention, and the minimum reflectance difference of 0.04285 (change rate: 148.950%) was observed in the 350-735 nm range under the same dust retention level. Among the 36 vegetation indices, only the global environment monitoring index (GEMI) and the ratio of transformed chlorophyll absorption in reflectance index to optimized soil-adjusted vegetation index (TCARI/OSAVI) exhibited dust resistance, with GEMI being effective below 6 g/m2 and TCARI/OSAVI remaining stable across all levels (average ratio: 0.970). The newly developed indices in this study, (RE3-RE2)/(NIR-RE2), (RE3-RE2)/(RE4-RE2), and (NIR-RE2)/(RE4-RE2), retained values within the predefined dust-resistant range over the full dust retention levels of 0-24 g/m2, thus showing a more stable dust resistance compared with the commonly used 36 vegetation indices. Specially, (RE3-RE2)/(RE4-RE2) performed the most robustly in Sentinel-2 imagery, that is, 58.020% of pixels were within the dust-resistant range, and an average ratio of 0.937 was obtained for the original-spectra index. This study provides a scientific basis for crop monitoring and management in dust-affected regions.
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Received: 26 August 2025
Published: 31 January 2026
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Corresponding Authors:
*MA Baodong (E-mail: mabaodong@mail.neu.edu.cn)
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| [1] |
Abasl A, Hu S Q, Maimaitireyimu N. 2015. Effect of climate change on cotton growth period and yield in Kashgar City, Xinjiang Uygur Autonomous Region. Chinese Journal of Eco-Agriculture, 23(7): 919-930. (in Chinese)
|
|
|
| [2] |
Abudukade S, Yang F, Liu Y Q, et al. 2023. Effects of artificial green land on land-atmosphere interactions in the Taklamakan Desert. Land, 12(8): 1541, doi: 10.3390/land12081541.
|
|
|
| [3] |
Ackerman D E, Finlay J C. 2019. Road dust biases NDVI and alters edaphic properties in Alaskan arctic tundra. Scientific Reports, 9: 214, doi: 10.1038/s41598-018-36804-3.
pmid: 30659211
|
|
|
| [4] |
Ao D, Yang J H, Ding W T, et al. 2023. Review of 54 vegetation indices. Journal of Anhui Agricultural Sciences, 51(1): 13-21, 28. (in Chinese)
|
|
|
| [5] |
Bi R T, Bai Z K. 2007. Land characteristic information and classification in opencast coal mine based on remote sensing images. Transactions of the Chinese Society of Agricultural Engineering, 23(2): 77-82, 291. (in Chinese)
|
|
|
| [6] |
Chen S Y, Huang J P, Li J X, et al. 2017. Comparison of dust emissions, transport, and deposition between the Taklimakan Desert and Gobi Desert from 2007 to 2011. Science China Earth Sciences, 60(7): 1338-1355.
doi: 10.1007/s11430-016-9051-0
|
|
|
| [7] |
Fu Y Z, Wang X Q. 2010. Analysis of vegetation indices based on the CCD data of BJ-1. Science of Surveying and Mapping, 35(6): 37-40.
|
|
|
| [8] |
Haboudane D, Miller J R, Tremblay N, et al. 2002. Integrated narrow-band vegetation indices for prediction of crop chlorophyll content for application to precision agriculture. Remote Sensing of Environment, 81(2-3): 416-426.
doi: 10.1016/S0034-4257(02)00018-4
|
|
|
| [9] |
Jin Q J, Wang C E. 2018. The greening of Northwest Indian subcontinent and reduction of dust abundance resulting from Indian summer monsoon revival. Scientific Reports, 8: 4573, doi: 10.1038/s41598-018-23055-5.
pmid: 29545562
|
|
|
| [10] |
Kayet N, Pathak K, Singh C P, et al. 2024. Assessment and estimation of coal dust impact on vegetation using Vis difference model and PRISMA hyperspectral data in mining sites. Journal of Environmental Management, 367: 121935, doi: 10.1016/j.jenvman.2024.121935.
|
|
|
| [11] |
Le Page M, Jarlan L, El Hajj M M, et al. A. 2020. Potential for the detection of irrigation events on maize plots using Sentinel-1 soil moisture products. Remote Sensing, 12(10): 1621, doi: 10.3390/rs12101621.
|
|
|
| [12] |
Li Z P. 2022. Predicting above-ground biomass and yield of winter wheat based on UAV multi-source spectral remote sensing imagery MSc Thesis. Henan Agricultural University. (in Chinese)
|
|
|
| [13] |
Lin W P, Sun Y, Wang D, et al. 2021. Estimation model of dust deposition capacity of common vegetation based on spectral characteristics in Shanghai, China. Sustainable Cities and Society, 70: 102915, doi: 10.1016/j.scs.2021.102915.
|
|
|
| [14] |
Liu L C, Cao R Y, Shen M G, et al. 2019. How does scale effect influence spring vegetation phenology estimated from satellite-derived vegetation indexes? Remote Sensing, 11(18): 2137, doi: 10.3390/rs11182137.
|
|
|
| [15] |
Lyon R J P. 1996. The effects of weathering and other varnish-like coatings on high spectral resolution airborne imagery (Part two). National Remote Sensing Bulletin, 11(3): 186-194. (in Chinese)
|
|
|
| [16] |
Ma B D, Li X X, Jiang Z W, et al. 2020. Dust dispersion and its effect on vegetation spectra at canopy and pixel scales in an open-pit mining area. Remote Sensing, 12(22): 3759, doi: 10.3390/rs12223759.
|
|
|
| [17] |
Ma B D, Yang X R, Jiang Z W, et al. 2023. Influence and quantitative analysis of coal dust retention on reflectance spectra and vegetation index of leaves. Spectroscopy and Spectral Analysis, 43(6): 1947-1952. (in Chinese)
|
|
|
| [18] |
Nguy-Robertson A, Gitelson A, Peng Y, et al. 2012. Green leaf area index estimation in maize and soybean: combining vegetation indices to achieve maximal sensitivity. Agronomy Journal, 104(5): 1336-1347.
doi: 10.2134/agronj2012.0065
|
|
|
| [19] |
Prospero J M, Ginoux P, Torres O, et al. 2002. Environmental characterization of global sources of atmospheric soil dust identified with the Nimbus 7 Total Ozone Mapping Spectrometer (TOMS) absorbing aerosol product. Reviews of Geophysics, 40(1): 2-31.
|
|
|
| [20] |
Przybysz A, Sæbø A, Hanslin H M, et al. 2014. Accumulation of particulate matter and trace elements on vegetation as affected by pollution level, rainfall and the passage of time. Science of the Total Environment, 481: 360-369.
doi: 10.1016/j.scitotenv.2014.02.072
|
|
|
| [21] |
Qi J B, Xie D H, Yin T G, et al. 2019. LESS: LargE-Scale remote sensing data and image simulation framework over heterogeneous 3D scenes. Remote Sensing of Environment, 221: 695-706.
doi: 10.1016/j.rse.2018.11.036
|
|
|
| [22] |
Qu J J, Hao X J, Kafatos M, et al. 2006. Asian dust storm monitoring combining terra and aqua MODIS SRB measurements. IEEE Geoscience and Remote Sensing Letters, 3(4): 484-486.
doi: 10.1109/LGRS.2006.877752
|
|
|
| [23] |
Rondeaux G, Steven M, Baret F. 1996. Optimization of soil-adjusted vegetation indices. Remote Sensing of Environment, 55(2): 95-107.
doi: 10.1016/0034-4257(95)00186-7
|
|
|
| [24] |
Sawidis T, Breuste J, Mitrovic M, et al. 2011. Trees as bioindicator of heavy metal pollution in three European cities. Environmental Pollution, 159(12): 3560-3570.
doi: 10.1016/j.envpol.2011.08.008
pmid: 21907471
|
|
|
| [25] |
Serouart M, Lopez-Lozano R, Daubige G, et al. 2023. Analyzing changes in maize leaves orientation due to GxExM using an automatic method from RGB images. Plant Phenomics, 5: 0046, doi: 10.34133/plantphenomics.0046.
|
|
|
| [26] |
Shahid M, Dumat C, Khalid S, et al. 2017. Foliar heavy metal uptake, toxicity and detoxification in plants: A comparison of foliar and root metal uptake. Journal of Hazardous Materials, 325: 36-58.
doi: S0304-3894(16)31093-7
pmid: 27915099
|
|
|
| [27] |
Shang R, Liu R G, Xu M Z, et al. 2017. The relationship between threshold-based and inflexion-based approaches for extraction of land surface phenology. Remote Sensing of Environment, 199: 167-170.
doi: 10.1016/j.rse.2017.07.020
|
|
|
| [28] |
Sun Y D, Chen Q B, Li Y M, et al. 2019. Relationship between leaf structure and dust retention capacity of 6 greening tree species in Kunming. Journal of Southwest Forestry University, 39(3): 78-85. (in Chinese)
|
|
|
| [29] |
Wang G, Yu Q, Yang D, et al. 2022. Retrieval of dust retention distribution in Beijing urban green space based on spectral characteristics. Spectroscopy and Spectral Analysis, 42(8): 2572-2578. (in Chinese)
|
|
|
| [30] |
Wang X M, Zhou Z J, Dong Z B. 2006. Control of dust emissions by geomorphic conditions, wind environments and land use in northern China: An examination based on dust storm frequency from 1960 to 2003. Geomorphology, 81(3-4): 292-308.
doi: 10.1016/j.geomorph.2006.04.015
|
|
|
| [31] |
Wang Z M, Li G M, Li X, et al. 2012. Characteristics of moisture and salinity of soil in Taklimakan Desert, China. Water Science and Technology, 66(6): 1162-1170.
doi: 10.2166/wst.2012.270
pmid: 22828291
|
|
|
| [32] |
Weerakkody U, Dover J W, Mitchell P, et al. 2018. The impact of rainfall in remobilising particulate matter accumulated on leaves of four evergreen species grown on a green screen and a living wall. Urban Forestry & Urban Greening, 35: 21-31.
|
|
|
| [33] |
Xu X W, Zhang Z M, Bao L, et al. 2017. Influence of rainfall duration and intensity on particulate matter removal from plant leaves. Science of the Total Environment, 609: 11-16.
doi: 10.1016/j.scitotenv.2017.07.141
|
|
|
| [34] |
Xu X W, Yu X X, Bao L, et al. 2019. Size distribution of particulate matter in runoff from different leaf surfaces during controlled rainfall processes. Environmental Pollution, 255(Part 1): 113234, doi: 10.1016/j.envpol.2019.113234.
|
|
|
| [35] |
Yan X, Shi W, Zhao W, et al. 2014. Estimation of atmospheric dust deposition on plant leaves based on spectral features. Spectroscopy Letters, 47(7): 536-542.
doi: 10.1080/00387010.2013.820761
|
|
|
| [36] |
Yao X F, Ge B Z, Li A B, et al. 2023. Spatio-temporal variation of PM2.5 pollution in Xinjiang and its causes: The growing importance in air pollution situation in China. Frontiers in Environmental Science, 10: 1051610, doi: 10.3389/fenvs.2022.1051610.
|
|
|
| [37] |
Yumimoto K, Kajino M, Tanaka T Y, et al. 2019. Dust vortex in the Taklimakan Desert by Himawari-8 high frequency and resolution observation. Scientific Reports, 9: 1029, doi: 10.1038/s41598-018-37861-4.
|
|
|
| [38] |
Zeng F G, Ding Z Y, Song Q K, et al. 2023. MT-Det: A novel fast object detector of maize tassel from high-resolution imagery using single level feature. Computers and Electronics in Agriculture, 214: 108135, doi: 10.1016/j.compag.2023.108305.
|
|
|
| [39] |
Zhang C, Su X Y, Xia T, et al. 2023. Monitoring the degree of pollution in different varieties of maize under copper and lead stress. Spectroscopy and Spectral Analysis, 43(4): 1268-1274. (in Chinese)
|
|
|
| [40] |
Zhang L F, Yan H W, Qiu L S, et al. 2021. Spatial and temporal analyses of vegetation changes at multiple time scales in the Qilian Mountains. Remote Sensing, 13(24): 5046, doi: 10.3390/rs13245046.
|
|
|
| [41] |
Zhang X X, Sharratt B, Chen X, et al. 2017. Dust deposition and ambient PM10 concentration in Northwest China: spatial and temporal variability. Atmospheric Chemistry and Physics, 17(3): 1699-1711.
|
|
|
| [42] |
Zhang Y L, Wang X, Li C H, et al. 2018. NDVI dynamics under changing meteorological factors in a shallow lake in future metropolitan, semiarid area in North China. Scientific Reports, 8: 15971, doi: 10.1038/s41598-018-33968-w.
pmid: 30374106
|
|
|
| [43] |
Zhao Y B, Lei S G, Yang X C, et al. 2020. Study on spectral response and estimation of grassland plants dust retention based on hyperspectral data. Remote Sensing, 12(12): 2019, doi: 10.3390/rs12122019.
|
|
|
| [44] |
Zhou Y Q, Li Y M, Li W, et al. 2022. Ecological responses to climate change and human activities in the arid and semi-arid regions of Xinjiang in China. Remote Sensing, 14(16): 3911, doi: 10.3390/rs14163911.
|
|
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