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Featured researches published by Xinle Zhang.


Pedosphere | 2009

Quantitative Analysis of Moisture Effect on Black Soil Reflectance

Huanjun Liu; Yuanzhi Zhang; Xinle Zhang; Bai Zhang; Kaishan Song; Zongming Wang; Na Tang

Several studies have demonstrated that soil reflectance decreases with increasing soil moisture content, or increases when the soil moisture reaches a certain content; however, there are few analyses on the quantitative relationship between soil reflectance and its moisture, especially in the case of black soils in northeast China. A new moisture adjusting method was developed to obtain soil reflectance with a smaller moisture interval to describe the quantitative relationship between soil reflectance and moisture. For the soil samples with moisture contents ranging from air-dry to saturated, the changes in soil reflectance with soil moisture can be depicted using a cubic equation. Both moisture threshold (MT) and moisture inflexion (MI) of soil reflectance can also be determined by the equation. When the moisture range was smaller than MT, soil reflectance can be simulated with a linear model. However, for samples with different soil organic matter (OM), the parameters of the linear model varied regularly with the OM content. Based on their relationship, the soil moisture can be estimated from soil reflectance in the black soil region.


Environmental Monitoring and Assessment | 2015

Integration of multi-disciplinary geospatial data for delineating agroecosystem uniform management zones

Huanjun Liu; Ted Huffman; Jiangui Liu; Zhe Li; Bahram Daneshfar; Xinle Zhang

Understanding agricultural ecosystems and their complex interactions with the environment is important for improving agricultural sustainability and environmental protection. Developing the necessary understanding requires approaches that integrate multi-source geospatial data and interdisciplinary relationships at different spatial scales. In order to identify and delineate landscape units representing relatively homogenous biophysical properties and eco-environmental functions at different spatial scales, a hierarchical system of uniform management zones (UMZ) is proposed. The UMZ hierarchy consists of seven levels of units at different spatial scales, namely site-specific, field, local, regional, country, continent, and globe. Relatively few studies have focused on the identification of the two middle levels of units in the hierarchy, namely the local UMZ (LUMZ) and the regional UMZ (RUMZ), which prevents true eco-environmental studies from being carried out across the full range of scales. This study presents a methodology to delineate LUMZ and RUMZ spatial units using land cover, soil, and remote sensing data. A set of objective criteria were defined and applied to evaluate the within-zone homogeneity and between-zone separation of the delineated zones. The approach was applied in a farming and forestry region in southeastern Ontario, Canada, and the methodology was shown to be objective, flexible, and applicable with commonly available spatial data. The hierarchical delineation of UMZs can be used as a tool to organize the spatial structure of agricultural landscapes, to understand spatial relationships between cropping practices and natural resources, and to target areas for application of specific environmental process models and place-based policy interventions.


Spectroscopy Letters | 2018

Selection of optimal combinations of inputs in a partial least squares model for prediction of soil organic matter

Ran Kang; Xiaokang Zhang; Huanjun Liu; Jiangui Liu; Xinle Zhang; Xiang Wang; Xin Dou

Abstract Partial least squares model is widely used in estimation of soil physical and chemical parameters such as soil organic matter and moisture content, due to its advantages in dealing with collinearity of variables like hyperspectral reflectance. However, it is hard to determine optimal combination of partial least squares model input for soil organic matter prediction since there are lots of possibilities such as, different mathematical transformation of spectral reflectance, wavelength ranges, and spectral resolution. Laboratory hyperspectral reflectance of soils in Songnen plain were analyzed in this study, and the orthogonal experimental design method for deriving optimal combination of input variables for soil organic matter prediction models was introduced. For intercalating orthogonal experimental design table, five different levels which commonly used by researchers were assigned to factors. Results show that the optimal combination input for single black soil is using the derivative logarithmic reciprocal reflectance in the wavelength range selected by multiple stepwise regression at a spectral resolution of 5 nm (R2= 0.95, RMSE = 0.21, and RPD = 4.49), and different soils is using continuum removed in the wavelength range selected by MSR at a spectral resolution of 5 nm (R2 = 0.77, RMSE = 0.74, and RPD = 2.08). With optimal combination input, the partial least squares model prediction ability was evaluated as excellent for single black soil, possible for different soils. This study illustrates the orthogonal experimental design method can be an effective way to identify the optimal input variables of a partial least squares model for soil organic matter prediction, and multiple stepwise regression can be a preprocessing step to reduce hyperspectral data redundancy before using partial least squares to predict soil organic matter. Overall, this study provides a new approach for determining optimal input of partial least squares predicting model.


Precision Agriculture | 2018

Maximizing the relationship of yield to site-specific management zones with object-oriented segmentation of hyperspectral images

Huanjun Liu; Michael L. Whiting; Susan L. Ustin; Pablo J. Zarco-Tejada; Ted Huffman; Xinle Zhang

Quick and low cost delineation of site-specific management zones (SSMZ) would improve applications of precision agriculture. In this study, a new method for delineating SSMZ using object-oriented segmentation of airborne imagery was demonstrated. Three remote sensing domains—spectral, spatial, and temporal- are exploited to improve the SSMZ relationship to yield. Common vegetation indices (VI), and first and second derivatives (


international geoscience and remote sensing symposium | 2017

Delineation of site-specific management zone based on SPOT6/7 remote sensing image in black soil area, Northeast China

Huanjun Liu; Zhengchao Qiu; Linghua Meng; Mengyuan Xu; Yue Pan; Xinle Zhang


Canadian Journal of Remote Sensing | 2017

Estimation of Cotton Yield Using the Reconstructed Time-Series Vegetation Index of Landsat Data

Linghua Meng; Xinle Zhang; Huanjun Liu; Dong Guo; Yan Yan; Lele Qin; Yue Pan

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Spectroscopy and Spectral Analysis | 2010

Black soil organic matter predicting model based on field hyperspectral reflectance

Huanjun Liu; Xinle Zhang; Zheng Sf; Tang N; Hu Yl


international conference on agro geoinformatics | 2018

Cotton Yield Estimation Model Based on Fusion Image from MODIS and Landsat Data

Linghua Meng; Huanjun Liu; Xinle Zhang; Mengyuan Xu; Dong Guo; Yue Pan

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Geoderma | 2018

Allocate soil individuals to soil classes with topsoil spectral characteristics and decision trees

Xiaokang Zhang; Huanjun Liu; Xinle Zhang; Shengnan Yu; Xin Dou; Yahui Xie; Nan Wang


Spectroscopy and Spectral Analysis | 2009

Study on the Main Influencing Factors of Black Soil Spectral Characteristics

Huanjun Liu; Wantai Yu; Xinle Zhang; Qiang Ma; Zhou H; Zs Jiang

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Huanjun Liu

Northeast Agricultural University

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Linghua Meng

Northeast Agricultural University

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Yue Pan

Northeast Agricultural University

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Dong Guo

Northeast Agricultural University

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Mengyuan Xu

Northeast Agricultural University

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Xiaokang Zhang

Northeast Agricultural University

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Xin Dou

Northeast Agricultural University

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Jiangui Liu

Agriculture and Agri-Food Canada

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Ted Huffman

Agriculture and Agri-Food Canada

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Bai Zhang

Chinese Academy of Sciences

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