145 research outputs found

    An evaluation of natural stratification and sample allocation used in transition year for the US Great Plains

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    There are no author-identified significant results in this report

    Large Area Crop Inventory Experiment (LACIE). A revised screening procedure for LACIE phase 3 data in the US Great Plains

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    The author has identified the following significant results. The screening procedure resulted in a substantial decrease in the official LACIE winter acreage estimate, bringing the two estimates into better agreement with corresponding USDA/ESCS estimates

    Estimation of within-stratum variance for sample allocation: Foreign commodity production forecasting

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    The problem of determining the stratum variances required for an optimum sample allocation for remotely sensed crop surveys is investigated with emphasis on an approach based on the concept of stratum variance as a function of the sampling unit size. A methodology using the existing and easily available information of historical statistics is developed for obtaining initial estimates of stratum variances. The procedure is applied to variance for wheat in the U.S. Great Plains and is evaluated based on the numerical results obtained. It is shown that the proposed technique is viable and performs satisfactorily with the use of a conservative value (smaller than the expected value) for the field size and with the use of crop statistics from the small political division level

    A statistical test procedure for detecting multiple outliers in a data set

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    There are no author-identified significant results in this report

    Error analysis of leaf area estimates made from allometric regression models

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    Biological net productivity, measured in terms of the change in biomass with time, affects global productivity and the quality of life through biochemical and hydrological cycles and by its effect on the overall energy balance. Estimating leaf area for large ecosystems is one of the more important means of monitoring this productivity. For a particular forest plot, the leaf area is often estimated by a two-stage process. In the first stage, known as dimension analysis, a small number of trees are felled so that their areas can be measured as accurately as possible. These leaf areas are then related to non-destructive, easily-measured features such as bole diameter and tree height, by using a regression model. In the second stage, the non-destructive features are measured for all or for a sample of trees in the plots and then used as input into the regression model to estimate the total leaf area. Because both stages of the estimation process are subject to error, it is difficult to evaluate the accuracy of the final plot leaf area estimates. This paper illustrates how a complete error analysis can be made, using an example from a study made on aspen trees in northern Minnesota. The study was a joint effort by NASA and the University of California at Santa Barbara known as COVER (Characterization of Vegetation with Remote Sensing)

    Stratum variance estimation for sample allocation in crop surveys

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    The problem of determining stratum variances needed in achieving an optimum sample allocation for crop surveys by remote sensing is investigated by considering an approach based on the concept of stratum variance as a function of the sampling unit size. A methodology using the existing and easily available information of historical crop statistics is developed for obtaining initial estimates of tratum variances. The procedure is applied to estimate stratum variances for wheat in the U.S. Great Plains and is evaluated based on the numerical results thus obtained. It is shown that the proposed technique is viable and performs satisfactorily, with the use of a conservative value for the field size and the crop statistics from the small political subdivision level, when the estimated stratum variances were compared to those obtained using the LANDSAT data

    Lacie phase 1 Classification and Mensuration Subsystem (CAMS) rework experiment

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    An experiment was designed to test the ability of the Classification and Mensuration Subsystem rework operations to improve wheat proportion estimates for segments that had been processed previously. Sites selected for the experiment included three in Kansas and three in Texas, with the remaining five distributed in Montana and North and South Dakota. The acquisition dates were selected to be representative of imagery available in actual operations. No more than one acquisition per biophase were used, and biophases were determined by actual crop calendars. All sites were worked by each of four Analyst-Interpreter/Data Processing Analyst Teams who reviewed the initial processing of each segment and accepted or reworked it for an estimate of the proportion of small grains in the segment. Classification results, acquisitions and classification errors and performance results between CAMS regular and ITS rework are tabulated

    Fluctuations of a long, semiflexible polymer in a narrow channel

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    We consider an inextensible, semiflexible polymer or worm-like chain, with persistence length PP and contour length LL, fluctuating in a cylindrical channel of diameter DD. In the regime D≪P≪LD\ll P\ll L, corresponding to a long, tightly confined polymer, the average length of the channel occupied by the polymer and the mean square deviation from the average vary as =[1−α∘(D/P)2/3]L=[1-\alpha_\circ(D/P)^{2/3}]L and <ΔR∥ 2 >=β∘(D2/P)L<\Delta R_\parallel^{\thinspace 2}\thinspace>=\beta_\circ(D^2/P)L, respectively, where α∘\alpha_\circ and β∘\beta_\circ are dimensionless amplitudes. In earlier work we determined α∘\alpha_\circ and the analogous amplitude α□\alpha_\Box for a channel with a rectangular cross section from simulations of very long chains. In this paper we estimate β∘\beta_\circ and β□\beta_\Box from the simulations. The estimates are compared with exact analytical results for a semiflexible polymer confined in the transverse direction by a parabolic potential instead of a channel and with a recent experiment. For the parabolic confining potential we also obtain a simple analytic result for the distribution of R∥R_\parallel or radial distribution function, which is asymptotically exact for large LL and has the skewed shape seen experimentally.Comment: 21 pages, including 4 figure

    Estimation of Proportions of Objects and Determination of Training Sample-Size in a Remote Sensing Application

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    One of the problems in remote sensing is estimating the expected proportions of certain categories of objects which cannot be observed directly or distinctly. For example, a multi-channel scanning device may fail to observe objects because of obstructions blocking the view, or different categories of objects may make up a resolution element giving rise to a single observation. This will require ground truth on any such categories of objects for estimating their expected proportions associated with various classes represented in the remote sensing data. Considering the classes to be distributed as multivariate normal with different mean vectors and common covariance, we give the maximum likelihood estimates for the expected proportions of objects associated with different classes, using the Bayes procedure for classification of individuals obtained from these classes. An approximate solution for simultaneous confidence intervals on these proportions is given, and thereby a sample-size needed to achieve a desired amount of accuracy for the estimates has been determined
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