Suming Jin - Academia.edu (original) (raw)

Papers by Suming Jin

Research paper thumbnail of Applicability of Landsat ETM+ SLC-off Imagery Filled using the Neighborhood Similar Pixel Interpolator for Change Detection

The scan-line corrector (SLC) of the Landsat 7 Enhanced Thematic Mapper Plus (ETM+) failed in 200... more The scan-line corrector (SLC) of the Landsat 7 Enhanced Thematic Mapper Plus (ETM+) failed in 2003, which seriously limited scientific applications of ETM+ data. A method called the Neighborhood Similar Pixel Interpolator (NSPI) was developed to interpolate the values of the pixels within the gaps. This method is based on the assumption that the same-class neighboring pixels around the un-scanned pixels have similar spectral characteristics and that these neighboring and un-scanned pixels exhibit similar patterns of spectral differences between dates. Previous study indicates that NSPI performs well for filling image data gaps, even across heterogeneous landscapes. This study evaluated the applicability and effectiveness of using the NSPI-filled SLC-off ETM+ images for change detection. Six Landsat path/rows representing a variety of landscapes with different types of dominant disturbances were selected, and an SLC-on image pair was obtained for each path/row. A simulated SLC-off im...

Research paper thumbnail of A Multi-Index Integrated Change Detection Method for Updating the National Land Cover Database

Land cover change is typically captured by comparing two or more dates of imagery and associating... more Land cover change is typically captured by comparing two or more dates of imagery and associating spectral change with true thematic change. A new change detection method, Multi-Index Integrated Change (MIIC), has been developed to capture a full range of land cover disturbance patterns for updating the National Land Cover Database (NLCD). Specific indices typically specialize in identifying only certain types of disturbances; for example, the Normalized Burn Ratio (NBR) has been widely used for monitoring fire disturbance. Recognizing the potential complementary nature of multiple indices, we integrated four indices into one model to more accurately detect true change between two NLCD time periods. The four indices are NBR, Normalized Difference Vegetation Index (NDVI), Change Vector (CV), and a newly developed index called the Relative Change Vector (RCV). The model is designed to provide both change location and change direction (e.g. biomass increase or biomass decrease). The in...

Research paper thumbnail of A simple and effective method for filling gaps in Landsat ETM+ SLC-off images

Remote Sensing of Environment, 2011

Research paper thumbnail of Spatial variations in immediate greenhouse gases and aerosol emissions and resulting radiative forcing from wildfires in interior Alaska

Theoretical and Applied Climatology, 2015

ABSTRACT Boreal fires can cool the climate; however, this conclusion came from individual fires a... more ABSTRACT Boreal fires can cool the climate; however, this conclusion came from individual fires and may not represent the whole story. We hypothesize that the climatic impact of boreal fires depends on local landscape heterogeneity such as burn severity, prefire vegetation type, and soil properties. To test this hypothesis, spatially explicit emission of greenhouse gases (GHGs) and aerosols and their resulting radiative forcing are required as an important and necessary component towards a full assessment. In this study, we integrated remote sensing (Landsat and MODIS) and models (carbon consumption model, emission factors model, and radiative forcing model) to calculate the carbon consumption, GHGs and aerosol emissions, and their radiative forcing of 2001–2010 fires at 30 m resolution in the Yukon River Basin of Alaska. Total carbon consumption showed significant spatial variation, with a mean of 2,615 g C m−2 and a standard deviation of 2,589 g C m−2. The carbon consumption led to different amounts of GHGs and aerosol emissions, ranging from 593.26 Tg (CO2) to 0.16 Tg (N2O). When converted to equivalent CO2 based on global warming potential metric, the maximum 20 years equivalent CO2 was black carbon (713.77 Tg), and the lowest 20 years equivalent CO2 was organic carbon (−583.13 Tg). The resulting radiative forcing also showed significant spatial variation: CO2, CH4, and N2O can cause a 20-year mean radiative forcing of 7.41 W m−2 with a standard deviation of 2.87 W m−2. This emission forcing heterogeneity indicates that different boreal fires have different climatic impacts. When considering the spatial variation of other forcings, such as surface shortwave forcing, we may conclude that some boreal fires, especially boreal deciduous fires, can warm the climate.

Research paper thumbnail of Comparison of time series tasseled cap wetness and the normalized difference moisture index in detecting forest disturbances

Remote Sensing of Environment, 2005

... These first three features have been labeled brightness, greenness and wetness, respectively.... more ... These first three features have been labeled brightness, greenness and wetness, respectively. ... The tasseled cap brightness and greenness features did not separate old growth and mature forests due to their sensitivity to topography. ...

Research paper thumbnail of MODIS time-series imagery for forest disturbance detection and quantification of patch size effects

Remote Sensing of Environment, 2005

The Moderate Resolution Imaging Spectroradiometer (MODIS) 250 m single day surface reflectance (M... more The Moderate Resolution Imaging Spectroradiometer (MODIS) 250 m single day surface reflectance (MOD09GQK) and 16-day composite gridded vegetation index data (MOD13Q1) were used to detect forest harvest disturbance between 2000 and 2004 in northern Maine. A MODIS multi-date Normalized Difference Vegetation Index (NDVI) forest change detection map was developed from each MODIS data set. A Landsat TM/ETM+ change detection map was developed as a reference to assess the effect of disturbed forest patch size on classification accuracy (agreement) and disturbed area estimates of MODIS. The MODIS single day and 16-day composite data showed no significant difference in overall classification accuracies. However, the 16-day NDVI change detection map had marginally higher overall classification accuracy (at 85%), but had significantly lower detection accuracy related to disturbed patch size than the single day NDVI change detection map. The 16-day composite NDVI data achieved 69% detection accuracy and the single day NDVI achieved 76% when the disturbed patch size was greater than 20 ha. The detection accuracy increased to approximately 90% for both data sets when the patch size exceeded 50 ha. The R2 (range 0.6 to 0.9) and slope (range 0.5 to 0.9) of regression lines between Landsat and MODIS data (based on forest disturbance percent of township) increased with the mean disturbed patch size of each township. The 95% confidence intervals of forest disturbance percent estimate for each township were narrow with less than 1% of each township at the mean MODIS forest disturbance level.

Research paper thumbnail of A comprehensive change detection method for updating the National Land Cover Database to circa 2011

Remote Sensing of Environment, 2013

ABSTRACT The importance of characterizing, quantifying, and monitoring land cover, land use, and ... more ABSTRACT The importance of characterizing, quantifying, and monitoring land cover, land use, and their changes has been widely recognized by global and environmental change studies. Since the early 1990s, three U.S. National Land Cover Database (NLCD) products (circa 1992, 2001, and 2006) have been released as free downloads for users. The NLCD 2006 also provides land cover change products between 2001 and 2006. To continue providing updated national land cover and change datasets, a new initiative in developing NLCD 2011 is currently underway. We present a new Comprehensive Change Detection Method (CCDM) designed as a key component for the development of NLCD 2011 and the research results from two exemplar studies. The CCDM integrates spectral-based change detection algorithms including a Multi-Index Integrated Change Analysis (MIICA) model and a novel change model called Zone, which extracts change information from two Landsat image pairs. The MIICA model is the core module of the change detection strategy and uses four spectral indices (CV, RCVMAX, dNBR, and dNDVI) to obtain the changes that occurred between two image dates. The CCDM also includes a knowledge-based system, which uses critical information on historical and current land cover conditions and trends and the likelihood of land cover change, to combine the changes from MIICA and Zone. For NLCD 2011, the improved and enhanced change products obtained from the CCDM provide critical information on location, magnitude, and direction of potential change areas and serve as a basis for further characterizing land cover changes for the nation. An accuracy assessment from the two study areas show 100% agreement between CCDM mapped no-change class with reference dataset, and 18% and 82% disagreement for the change class for WRS path/row p22r39 and p33r33, respectively. The strength of the CCDM is that the method is simple, easy to operate, widely applicable, and capable of capturing a variety of natural and anthropogenic disturbances potentially associated with land cover changes on different landscapes.

Research paper thumbnail of Modeling spatially explicit fire impact on gross primary production in interior Alaska using satellite images coupled with eddy covariance

Remote Sensing of Environment, 2013

Research paper thumbnail of Reconstructing satellite images to quantify spatially explicit land surface change caused by fires and succession: A demonstration in the Yukon River Basin of interior Alaska

ISPRS Journal of Photogrammetry and Remote Sensing, 2013

Research paper thumbnail of Automated cloud and shadow detection and filling using two-date Landsat imagery in the USA

International Journal of Remote Sensing, 2013

ABSTRACT A simple, efficient, and practical approach for detecting cloud and shadow areas in sate... more ABSTRACT A simple, efficient, and practical approach for detecting cloud and shadow areas in satellite imagery and restoring them with clean pixel values has been developed. Cloud and shadow areas are detected using spectral information from the blue, shortwave infrared, and thermal infrared bands of Landsat Thematic Mapper or Enhanced Thematic Mapper Plus imagery from two dates a target image and a reference image. These detected cloud and shadow areas are further refined using an integration process and a false shadow removal process according to the geometric relationship between cloud and shadow. Cloud and shadow filling is based on the concept of the Spectral Similarity Group SSG, which uses the reference image to find similar alternative pixels in the target image to serve as replacement values for restored areas. Pixels are considered to belong to one SSG if the pixel values from Landsat bands 3, 4, and 5 in the reference image are within the same spectral ranges. This new approach was applied to five Landsat path/rows across different landscapes and seasons with various types of cloud patterns. Results show that almost all of the clouds were captured with minimal commission errors, and shadows were detected reasonably well. Among five test scenes, the lowest producer's accuracy of cloud detection was 93.9% and the lowest user's accuracy was 89%. The overall cloud and shadow detection accuracy ranged from 83.6% to 99.3%. The pixel-filling approach resulted in a new cloud-free image that appears seamless and spatially continuous despite differences in phenology between the target and reference images. Our methods offer a straightforward and robust approach for preparing images for the new 2011 National Land Cover Database production.

Research paper thumbnail of Exploratory analysis of forest harvest and regeneration pattern among multiple landowners

The Forestry Chronicle, 2006

Research paper thumbnail of Effects of forest ownership and change on forest harvest rates, types and trends in northern Maine

Forest Ecology and Management, 2006

Research paper thumbnail of Spatiotemporal variation of surface shortwave forcing from fire-induced albedo change in interior Alaska

Canadian Journal of Forest Research

Research paper thumbnail of Applicability of Landsat ETM+ SLC-off Imagery Filled using the Neighborhood Similar Pixel Interpolator for Change Detection

The scan-line corrector (SLC) of the Landsat 7 Enhanced Thematic Mapper Plus (ETM+) failed in 200... more The scan-line corrector (SLC) of the Landsat 7 Enhanced Thematic Mapper Plus (ETM+) failed in 2003, which seriously limited scientific applications of ETM+ data. A method called the Neighborhood Similar Pixel Interpolator (NSPI) was developed to interpolate the values of the pixels within the gaps. This method is based on the assumption that the same-class neighboring pixels around the un-scanned pixels have similar spectral characteristics and that these neighboring and un-scanned pixels exhibit similar patterns of spectral differences between dates. Previous study indicates that NSPI performs well for filling image data gaps, even across heterogeneous landscapes. This study evaluated the applicability and effectiveness of using the NSPI-filled SLC-off ETM+ images for change detection. Six Landsat path/rows representing a variety of landscapes with different types of dominant disturbances were selected, and an SLC-on image pair was obtained for each path/row. A simulated SLC-off im...

Research paper thumbnail of A Multi-Index Integrated Change Detection Method for Updating the National Land Cover Database

Land cover change is typically captured by comparing two or more dates of imagery and associating... more Land cover change is typically captured by comparing two or more dates of imagery and associating spectral change with true thematic change. A new change detection method, Multi-Index Integrated Change (MIIC), has been developed to capture a full range of land cover disturbance patterns for updating the National Land Cover Database (NLCD). Specific indices typically specialize in identifying only certain types of disturbances; for example, the Normalized Burn Ratio (NBR) has been widely used for monitoring fire disturbance. Recognizing the potential complementary nature of multiple indices, we integrated four indices into one model to more accurately detect true change between two NLCD time periods. The four indices are NBR, Normalized Difference Vegetation Index (NDVI), Change Vector (CV), and a newly developed index called the Relative Change Vector (RCV). The model is designed to provide both change location and change direction (e.g. biomass increase or biomass decrease). The in...

Research paper thumbnail of A simple and effective method for filling gaps in Landsat ETM+ SLC-off images

Remote Sensing of Environment, 2011

Research paper thumbnail of Spatial variations in immediate greenhouse gases and aerosol emissions and resulting radiative forcing from wildfires in interior Alaska

Theoretical and Applied Climatology, 2015

ABSTRACT Boreal fires can cool the climate; however, this conclusion came from individual fires a... more ABSTRACT Boreal fires can cool the climate; however, this conclusion came from individual fires and may not represent the whole story. We hypothesize that the climatic impact of boreal fires depends on local landscape heterogeneity such as burn severity, prefire vegetation type, and soil properties. To test this hypothesis, spatially explicit emission of greenhouse gases (GHGs) and aerosols and their resulting radiative forcing are required as an important and necessary component towards a full assessment. In this study, we integrated remote sensing (Landsat and MODIS) and models (carbon consumption model, emission factors model, and radiative forcing model) to calculate the carbon consumption, GHGs and aerosol emissions, and their radiative forcing of 2001–2010 fires at 30 m resolution in the Yukon River Basin of Alaska. Total carbon consumption showed significant spatial variation, with a mean of 2,615 g C m−2 and a standard deviation of 2,589 g C m−2. The carbon consumption led to different amounts of GHGs and aerosol emissions, ranging from 593.26 Tg (CO2) to 0.16 Tg (N2O). When converted to equivalent CO2 based on global warming potential metric, the maximum 20 years equivalent CO2 was black carbon (713.77 Tg), and the lowest 20 years equivalent CO2 was organic carbon (−583.13 Tg). The resulting radiative forcing also showed significant spatial variation: CO2, CH4, and N2O can cause a 20-year mean radiative forcing of 7.41 W m−2 with a standard deviation of 2.87 W m−2. This emission forcing heterogeneity indicates that different boreal fires have different climatic impacts. When considering the spatial variation of other forcings, such as surface shortwave forcing, we may conclude that some boreal fires, especially boreal deciduous fires, can warm the climate.

Research paper thumbnail of Comparison of time series tasseled cap wetness and the normalized difference moisture index in detecting forest disturbances

Remote Sensing of Environment, 2005

... These first three features have been labeled brightness, greenness and wetness, respectively.... more ... These first three features have been labeled brightness, greenness and wetness, respectively. ... The tasseled cap brightness and greenness features did not separate old growth and mature forests due to their sensitivity to topography. ...

Research paper thumbnail of MODIS time-series imagery for forest disturbance detection and quantification of patch size effects

Remote Sensing of Environment, 2005

The Moderate Resolution Imaging Spectroradiometer (MODIS) 250 m single day surface reflectance (M... more The Moderate Resolution Imaging Spectroradiometer (MODIS) 250 m single day surface reflectance (MOD09GQK) and 16-day composite gridded vegetation index data (MOD13Q1) were used to detect forest harvest disturbance between 2000 and 2004 in northern Maine. A MODIS multi-date Normalized Difference Vegetation Index (NDVI) forest change detection map was developed from each MODIS data set. A Landsat TM/ETM+ change detection map was developed as a reference to assess the effect of disturbed forest patch size on classification accuracy (agreement) and disturbed area estimates of MODIS. The MODIS single day and 16-day composite data showed no significant difference in overall classification accuracies. However, the 16-day NDVI change detection map had marginally higher overall classification accuracy (at 85%), but had significantly lower detection accuracy related to disturbed patch size than the single day NDVI change detection map. The 16-day composite NDVI data achieved 69% detection accuracy and the single day NDVI achieved 76% when the disturbed patch size was greater than 20 ha. The detection accuracy increased to approximately 90% for both data sets when the patch size exceeded 50 ha. The R2 (range 0.6 to 0.9) and slope (range 0.5 to 0.9) of regression lines between Landsat and MODIS data (based on forest disturbance percent of township) increased with the mean disturbed patch size of each township. The 95% confidence intervals of forest disturbance percent estimate for each township were narrow with less than 1% of each township at the mean MODIS forest disturbance level.

Research paper thumbnail of A comprehensive change detection method for updating the National Land Cover Database to circa 2011

Remote Sensing of Environment, 2013

ABSTRACT The importance of characterizing, quantifying, and monitoring land cover, land use, and ... more ABSTRACT The importance of characterizing, quantifying, and monitoring land cover, land use, and their changes has been widely recognized by global and environmental change studies. Since the early 1990s, three U.S. National Land Cover Database (NLCD) products (circa 1992, 2001, and 2006) have been released as free downloads for users. The NLCD 2006 also provides land cover change products between 2001 and 2006. To continue providing updated national land cover and change datasets, a new initiative in developing NLCD 2011 is currently underway. We present a new Comprehensive Change Detection Method (CCDM) designed as a key component for the development of NLCD 2011 and the research results from two exemplar studies. The CCDM integrates spectral-based change detection algorithms including a Multi-Index Integrated Change Analysis (MIICA) model and a novel change model called Zone, which extracts change information from two Landsat image pairs. The MIICA model is the core module of the change detection strategy and uses four spectral indices (CV, RCVMAX, dNBR, and dNDVI) to obtain the changes that occurred between two image dates. The CCDM also includes a knowledge-based system, which uses critical information on historical and current land cover conditions and trends and the likelihood of land cover change, to combine the changes from MIICA and Zone. For NLCD 2011, the improved and enhanced change products obtained from the CCDM provide critical information on location, magnitude, and direction of potential change areas and serve as a basis for further characterizing land cover changes for the nation. An accuracy assessment from the two study areas show 100% agreement between CCDM mapped no-change class with reference dataset, and 18% and 82% disagreement for the change class for WRS path/row p22r39 and p33r33, respectively. The strength of the CCDM is that the method is simple, easy to operate, widely applicable, and capable of capturing a variety of natural and anthropogenic disturbances potentially associated with land cover changes on different landscapes.

Research paper thumbnail of Modeling spatially explicit fire impact on gross primary production in interior Alaska using satellite images coupled with eddy covariance

Remote Sensing of Environment, 2013

Research paper thumbnail of Reconstructing satellite images to quantify spatially explicit land surface change caused by fires and succession: A demonstration in the Yukon River Basin of interior Alaska

ISPRS Journal of Photogrammetry and Remote Sensing, 2013

Research paper thumbnail of Automated cloud and shadow detection and filling using two-date Landsat imagery in the USA

International Journal of Remote Sensing, 2013

ABSTRACT A simple, efficient, and practical approach for detecting cloud and shadow areas in sate... more ABSTRACT A simple, efficient, and practical approach for detecting cloud and shadow areas in satellite imagery and restoring them with clean pixel values has been developed. Cloud and shadow areas are detected using spectral information from the blue, shortwave infrared, and thermal infrared bands of Landsat Thematic Mapper or Enhanced Thematic Mapper Plus imagery from two dates a target image and a reference image. These detected cloud and shadow areas are further refined using an integration process and a false shadow removal process according to the geometric relationship between cloud and shadow. Cloud and shadow filling is based on the concept of the Spectral Similarity Group SSG, which uses the reference image to find similar alternative pixels in the target image to serve as replacement values for restored areas. Pixels are considered to belong to one SSG if the pixel values from Landsat bands 3, 4, and 5 in the reference image are within the same spectral ranges. This new approach was applied to five Landsat path/rows across different landscapes and seasons with various types of cloud patterns. Results show that almost all of the clouds were captured with minimal commission errors, and shadows were detected reasonably well. Among five test scenes, the lowest producer's accuracy of cloud detection was 93.9% and the lowest user's accuracy was 89%. The overall cloud and shadow detection accuracy ranged from 83.6% to 99.3%. The pixel-filling approach resulted in a new cloud-free image that appears seamless and spatially continuous despite differences in phenology between the target and reference images. Our methods offer a straightforward and robust approach for preparing images for the new 2011 National Land Cover Database production.

Research paper thumbnail of Exploratory analysis of forest harvest and regeneration pattern among multiple landowners

The Forestry Chronicle, 2006

Research paper thumbnail of Effects of forest ownership and change on forest harvest rates, types and trends in northern Maine

Forest Ecology and Management, 2006

Research paper thumbnail of Spatiotemporal variation of surface shortwave forcing from fire-induced albedo change in interior Alaska

Canadian Journal of Forest Research