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Dive into the research topics where Thomas G. Matney is active.

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Featured researches published by Thomas G. Matney.


IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing | 2017

Consequences of Landsat Image Strata Classification Errors on Bias and Variance of Inventory Estimates: A Forest Inventory Case Study

Michael K. Crosby; Thomas G. Matney; Emily B. Schultz; David L. Evans; Donald L. Grebner; H. Alexis Londo; John Rodgers; Curtis A. Collins

Use of remotely sensed (e.g., Landsat) imagery for developing sampling frame strata for large-scale inventories of natural resources has potential for increasing sampling efficiency and lowering cost by reducing required sample sizes. Sampling frame errors are inherent with the use of this technology, either from user misclassification or due to flawed technology. Knowledge of these sampling frame errors is important, as they inflate the variance of inventory estimates, particularly poststratified estimates. Forest inventory estimates from the Mississippi Institute for Forest Inventory (MIFI) were utilized to study the extent to which Geographic Information System classification errors (sampling frame errors) affect forest volume and area mean and variance estimates. MIFIs high sampling intensity provided a unique opportunity to quantify the magnitude that different levels of misclassification ultimately have on mean and variance estimates. A variance calculator was developed to assess the impact of various levels of misclassification on least and most variable summary estimates of cubic meter volume percent and total area. The standard error estimates for mean and total volume decreased when plots were reallocated to their correct strata. The increased efficiency obtained from correcting misclassifications illustrates that the loss in precision due to misclassifying inventory strata is consequential. Knowledge and correction of these errors provides a natural-resource-based professional or investor using land classification/inventory data the best minimum risk information possible. A complete set of variance estimators for poststratified means and total area estimates with sampling frame errors are presented and compared to estimators without sampling frame errors.


Biomass & Bioenergy | 2009

Woody biomass availability for bioethanol conversion in Mississippi

Gustavo Perez-Verdin; Donald L. Grebner; Changyou Sun; Ian A. Munn; Emily B. Schultz; Thomas G. Matney


Res. Pap. SRS-25.Asheville, NC: U.S. Department of Agriculture, Forest Service, Southern Research Station. 24p. | 2001

Predicting Diameter Distributions of Longleaf Pine Plantations: A Comparison Between Artificial Neural Networks and Other Accepted Methodologies

Daniel J. Leduc; Thomas G. Matney; Keith L. Belli; V. Clark Baldwin


Southern Journal of Applied Forestry | 1999

Comparison of optical dendrometers for prediction of standing tree volume.

Robert C. Parker; Thomas G. Matney


Canadian Journal of Forest Research | 2006

Incorporating genetic parameters into a loblolly pine growth-and-yield model

Joshua P. Adams; Thomas G. Matney; Samuel B. Land; Keith L. Belli; Howard W. Duzan


한국펄프종이학회 기타 간행물 | 2006

A Growth and Yield Model for Predicting Both Forest Stumpage and Mill Side Manufactured Product Yields and Economics

Emily B. Schultz; Thomas G. Matney


Wood and Fiber Science | 2007

A Neural Network Model for Wood Chip Thickness Distributions

Emily B. Schultz; Thomas G. Matney; Jerry L. Koger


Forest Ecology and Management | 2008

Comparison of 17-year realized plot volume gains with selection for early traits for loblolly pine (Pinus taeda L.)

Joshua P. Adams; Samuel B. Land; Keith L. Belli; Thomas G. Matney


Southern Journal of Applied Forestry | 2010

Stand-Level Growth and Yield Component Models for Red Oak-Sweetgum Forests on Mid-South Minor Stream Bottoms

Emily B. Schultz; J. Clint Iles; Thomas G. Matney; Andrew W. Ezell; James S. Meadows; Theodor D. Leininger


Longleaf Pine: A Forward Look, Proceedings of the Second Longleaf Alliance Conference | 1999

Diameter Distributions of Longleaf Pine Plantations-A Neural Network Approach

Daniel J. Leduc; Thomas G. Matney; V. Clark Baldwin

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Emily B. Schultz

Mississippi State University

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Donald L. Grebner

Mississippi State University

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Joshua P. Adams

Mississippi State University

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Andrew W. Ezell

Mississippi State University

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David L. Evans

Mississippi State University

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James S. Meadows

United States Forest Service

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Theodor D. Leininger

United States Forest Service

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Changyou Sun

Mississippi State University

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Curtis A. Collins

Mississippi State University

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