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      Assessing the lidar revolution in the Maya lowlands: A geographic approach to understanding feature classification accuracy

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          Abstract

          It has been well over a decade since lidar-based research began in earnest in the Maya Lowlands of southern Mexico, Guatemala, Belize, and Honduras. Most investigations have an archaeological focus, with a few integrating studies of the ancient Maya with analyses of local ecology and land-use. A review of frequently cited publications reveals a lack of consistency in assessing the accuracy of archaeological feature classifications in lidar data with variables such as sensor type, class definitions, and ground-truthing methods differentially affecting assessment results across the Lowlands. In general, area-based ground-truthing approaches to classifications of full waveform lidar data present the most comprehensive accuracy assessments. New assessment data from the Buenavista Valley of north-central Guatemala are presented to compare against existing studies and to demonstrate how a geographic approach (a comprehensive, landscape-scale study of features over space and time) to classification error assessment can enhance understanding of classification accuracy. Results show that meaningful comparisons of archaeological features across lidar datasets cannot be considered reliable without more uniform and detailed presentations of accuracy assessment methods, analyses, and results. The article concludes with recommendations for how such collaborations might proceed.

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          Is Open Access

          A suite of global, cross-scale topographic variables for environmental and biodiversity modeling

          Topographic variation underpins a myriad of patterns and processes in hydrology, climatology, geography and ecology and is key to understanding the variation of life on the planet. A fully standardized and global multivariate product of different terrain features has the potential to support many large-scale research applications, however to date, such datasets are unavailable. Here we used the digital elevation model products of global 250 m GMTED2010 and near-global 90 m SRTM4.1dev to derive a suite of topographic variables: elevation, slope, aspect, eastness, northness, roughness, terrain roughness index, topographic position index, vector ruggedness measure, profile/tangential curvature, first/second order partial derivative, and 10 geomorphological landform classes. We aggregated each variable to 1, 5, 10, 50 and 100 km spatial grains using several aggregation approaches. While a cross-correlation underlines the high similarity of many variables, a more detailed view in four mountain regions reveals local differences, as well as scale variations in the aggregated variables at different spatial grains. All newly-developed variables are available for download at Data Citation 1 and for download and visualization at http://www.earthenv.org/topography.
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            Estimation of tropical forest structural characteristics using large-footprint lidar

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              Lidar: shedding new light on habitat characterization and modeling

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                Author and article information

                Contributors
                (View ORCID Profile)
                Journal
                Progress in Physical Geography: Earth and Environment
                Progress in Physical Geography: Earth and Environment
                SAGE Publications
                0309-1333
                1477-0296
                April 2023
                November 10 2022
                April 2023
                : 47
                : 2
                : 270-292
                Affiliations
                [1 ]Department of Geography and the Environment, University of Texas at Austin, USA
                [2 ]Department of Geography and Environmental Studies, Texas State University, San Marcos, USA
                [3 ]National Center for Airborne Laser Mapping, University of Houston, TX, USA
                [4 ]Escuela de Historia, Universidad de San Carlos, Guatemala City, Guatemala
                Article
                10.1177/03091333221138050
                63c9c053-6b32-42c0-9e27-cbe24bda88e8
                © 2023

                http://journals.sagepub.com/page/policies/text-and-data-mining-license

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