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Cai, S, D Liu, D Sulla-Menashe, and MA Friedl. 2014. Enhancing MODIS land cover product with a

spatial-temporal modeling algorithm. Remote Sensing of Environment 147: 243-255.

Related Publications

Friedl, MA, D Sulla-Menashe, B Tan, A Schneider, N Ramankutty, A Sibley, and X Huang. 2009. MODIS collection 5 global land cover: algorithm refinements and characterization of new datasets. Remote Sensing of Environment 114(1): 168-182.

C5 MODIS LC 

Abstract:

MODIS Collection 5 land cover product (MCD12Q1) provides annually updated global land cover maps since 2001. This time series product has become an essential data source for the generation of many other land surface products and for a variety of regional and global studies. However, classification errors are inherent in the land cover product, which can misrepresent land cover transitions. In particular, land cover transitions are illogical if they contradict ecological rules and are unlikely to be observed. In this study, we evaluated the MODIS land cover product by analyzing the nature and magnitude of its illogical land cover transitions using annual MCD12Q1 land cover maps from2001 to 2010. Our analysis revealed that illogical transitions exist in the product for all consecutive years, and are distributed most commonly in several regions over the world. To enhance the MODIS land cover product, we applied a spatial–temporal modeling algorithm that incorporates expert knowledge to reduce illogical transitions on five such “hotspot” tiles. The results showed substantial improvements in both accuracy and consistency of the land cover product using the spatial–temporal modeling algorithm. The percentage of illogical transitions in each of the five tiles was significantly reduced among consecutive years and across the entire time series. This study demonstrates the effectiveness of the spatial–temporal modeling algorithmfor producing high quality timeseries of land covermaps, and also highlights the importance of temporal consistency in land cover mapping.

Abstract:

Information related to land cover is immensely important to global change science. In the past decade, data sources and methodologies for creating global land cover maps from remote sensing have evolved rapidly. Here we describe the datasets and algorithms used to create the Collection 5 MODIS Global Land Cover Type product, which is substantially changed relative to Collection 4. In addition to using updated input data, the algorithm and ancillary datasets used to produce the product have been refined. Most importantly, the Collection 5 product is generated at 500-m spatial resolution, providing a four-fold increase in spatial resolution relative to the previous version. In addition, many components of the classification algorithm have been changed. The training site database has been revised, land surface temperature is now included as an input feature, and ancillary datasets used in post-processing of ensemble decision tree results have been updated. Further, methods used to correct classifier results for bias imposed by training data properties have been refined, techniques used to fuse ancillary data based on spatially varying prior probabilities have been revised, and a variety of methods have been developed to address limitations of the algorithm for the urban, wetland, and deciduous needleleaf classes. Finally, techniques used to stabilize classification results across years have been developed and implemented to reduce year-to-year variation in land cover labels not associated with land cover change. Results from a cross-validation analysis indicate that the overall accuracyof the product is about 75% correctly classified, but that the range in class-specific accuracies is large. Comparison of Collection 5 maps with Collection 4 results show substantial differences arising from increased spatial resolution and changes in the input data and classification algorithm.

External Links
Project Summary

The MODIS Land Cover Type (MCD12Q1) product is released online via several data portals. The global land cover maps were produced every year between 2001-2012.  Each map is based on a supervised classification of an annual time series of spectral observations from the Moderate Resolution Imaging Spectroradiometer (MODIS).  The decision tree classifiers rely on a database of training sites that are collected from every biome and continent.  Maintaining and augmenting this database, also called the System for Terrestrial Ecosystem Parameterization (STEP), was the major task for this project because of the sensitivity of the algorithm to mislabeled or changed sites.  Other tasks included writing the C codes to integrate ancillary information and stabilize the classification results through time.  In 2012 a new Collection 5.1 version of these maps was released in order to fix a bug in the time series caused by training sites that had been disturbed through time.

Map of prior probabilities for agriculture (IGBP class 12) and agricultural mosaic (IGBP class 14) derived from Ramankutty et al. (2008). Red and pink areas indicate regions with high likelihood of high intensity agriculture. Blue and purple areas indicate areas dominated by less intensive agricultural mosaics.

Image panel for MODIS tile V05H10 (south central United States) showing classification results at each stage of processing.

 MCD12Q1 2010 land cover map for five hotspot tiles: (a) H12V03, (b) H19V02, (c)H22V02, (d) H24V03, and (e)H27V06. Each image contains 2400 x 2400 MODIS pixels with a 500-m spatial resolution.

Frequency of illogical transitions observed in MCD12Q1 land cover maps from 2001 to 2010 based on the IGBP classification scheme. The squares represent the hotspot tiles used in the experiment.

The spatial–temporal neighborhood system used in the MRF model: NS(s, t) denotes spatial neighbors, NT1(s, t). denotes temporal neighbors at time t−1, and NT2(s, t). denotes temporal neighbors at time t+ 1. Adapted from Liu and Cai (2012).

Call

 617-353-1049

Email
Address

Department of Earth and Environment, Boston University, 675 Commonwealth Ave, Boston, MA 02215

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