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Featured researches published by T. L. Logan.


IEEE Transactions on Geoscience and Remote Sensing | 1986

Coniferous Forest Classification and Inventory Using Landsat and Digital Terrain Data

Janet Franklin; T. L. Logan; Curtis E. Woodcock; Alan H. Strahler

Accurate cost-effective stratification of forest vegetation and timber inventory is the primary goal of a Forest Classification and Inventory System (FOCIS) developed at the University of California, Santa Barbara, and the Jet Propulsion Laboratory, Pasadena. Conventional timber stratification using photointerpretation can be time-consuming, costly, and inconsistent from analyst to analyst. FOCIS was designed to overcome these problems by using machine-processing techniques to extract and process tonal, textural, and terrain information from registered Landsat multispectral and digital terrain data. FOCIS was developed in northern Californias Klamath National Forest (KNF), where the rugged terrain and diverse ecological conditions provided an excellent area for testing Landsat-based inventory techniques. The FOCIS procedure was further refined in the Eldorado National Forest (ENF), where the portability and flexibility of FOCIS was verified. Using FOCIS as a basis for stratified sampling, the softwood timber volume of the western portion of the Klamath (944 833 acres; 422 340 ha) was estimated at 3.83 x 109 ft3 (1.08 x 108 m3), with a standard error of 4.8 percent based on 89 sample plots. For the Eldorado, the softwood timber volume was estimated at 1.88 x 109 ft3 ( 0.53 x 108 m3) for an area of 342 818 acres (138 738 ha) with a standard error of 4.0 percent, based on 56 sample plots. These results illustrate the power of FOCIS methods to produce timely accurate large-area inventories with comparable accuracies and reduced costs when compared to conventional timber inventory methods.


Archive | 1978

Improving forest cover classification accuracy from Landsat by incorporating topographic information

Alan H. Strahler; T. L. Logan; N. A. Bryant


Archive | 1980

Stratification of forest vegetation for timber inventory using Landsat and collateral data

Curtis E. Woodcock; Alan H. Strahler; T. L. Logan


Archive | 1979

Forest Classification and Inventory System using Landsat, digital terrain, and ground sample data

Alan H. Strahler; Curtis E. Woodcock; T. L. Logan


Archive | 1983

Optimal Landsat transforms for forest applications

T. L. Logan; Alan H. Strahler


Archive | 1981

FOCIS: A forest classification and inventory system using LANDSAT and digital terrain data

Alan H. Strahler; Janet Franklin; Curtis E. Woodcock; T. L. Logan


Archive | 1979

Use of a Standard Deviation Based Texture Channel for Landsat Classification of Forest Strata

T. L. Logan; Alan H. Strahler; Curtis E. Woodcock


SPIE 1989 Technical Symposium on Aerospace Sensing | 1989

Designing an infrared system to map and detect wildland fires

J. David Nichols; Gary S. Parks; Jeffrey M. Voss; Robert A. Mortensen; T. L. Logan


Archive | 1982

Improvements in Forest Classification and Inventory Using Remotely Sensed Data

Curtis E. Woodcock; Janet Franklin; Alan H. Strahler; T. L. Logan


Archive | 1984

Surface vegetative biomass modelling from combined AVHRR and Landsat satellite data

T. L. Logan; Alan H. Strahler

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Janet Franklin

University of California

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Gary S. Parks

California Institute of Technology

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J. David Nichols

California Institute of Technology

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Jeffrey M. Voss

California Institute of Technology

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Robert A. Mortensen

California Institute of Technology

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