Title of article :
Using k-nn and discriminant analyses to classify rain forest types in a Landsat TM image over northern Costa Rica
Author/Authors :
Thessler، نويسنده , , Sirpa and Sesnie، نويسنده , , Steven and Ramos Bendaٌa، نويسنده , , Zayra S. and Ruokolainen، نويسنده , , Kalle and Tomppo، نويسنده , , Erkki and Finegan، نويسنده , , Bryan، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2008
Pages :
10
From page :
2485
To page :
2494
Abstract :
Conservation and land use planning in humid tropical lowland forests urgently need accurate remote sensing techniques to distinguish among floristically different forest types. We investigated the degree to which floristically and structurally defined Costa Rican lowland rain forest types can be accurately discriminated by a non-parametric k nearest neighbors (k-nn) classifier or linear discriminant analysis. Pixel values of Landsat Thematic Mapper (TM) image and Shuttle Radar Topography Mission (SRTM) elevation model extracted from segments or from 5 × 5 pixel windows were employed in the classifications. 104 field plots were classified into three floristic and one structural type of forest (regrowth forest). Three floristically defined forest types were formed through clustering the old-growth forest plots (n = 52) by their species specific importance values. An error assessment of the image classification was conducted via cross-validation and error matrices, and overall percent accuracy and Kappa scores were used as measures of accuracy. Image classification of the four forest types did not adequately distinguish two old-growth forest classes, so they were merged into a single forest class. The resulting three forest classes were most accurately classified by the k-nn classifier using segmented image data (overall accuracy 91%). The second best method, with respect to accuracy, was the k-nn with 5 × 5 pixel windows data (89% accuracy), followed by the canonical discriminant analysis using the 5 × 5 pixel window data (86%) and the segment data (82%). We conclude the k-nn classifier can accurately distinguish floristically and structurally different rain forest types. The classification accuracies were higher for the k-nn classifier than for the canonical discriminant analysis, but the differences in Kappa scores were not statistically significant. The segmentation did not increase classification accuracy in this study.
Keywords :
Satellite image , segmentation , Tropical rain forest , Discriminant analysis , Forest classification , K nearest neighbours , LANDSAT TM 5 , Remote sensing
Journal title :
Remote Sensing of Environment
Serial Year :
2008
Journal title :
Remote Sensing of Environment
Record number :
1575445
Link To Document :
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