TY - JOUR
T1 - Estimation of subpixel target size for remotely sensed imagery
AU - Chang, Chein I.
AU - Ren, Hsuan
AU - Chang, Chein Chi
AU - D'Amico, Francis
AU - Jensen, James O.
N1 - Funding Information:
The first two authors would like to thank support received from the National Research Council and the U.S. Army Edge-wood Chemical and Biological Center.
Funding Information:
Manuscript received June 7, 2003; revised January 10, 2004. This work was supported in part by the National Research Council under a Senior Research Associateship and in part by the U.S. Army Edgewood Chemical and Biological Center under a Postdoctoral Associateship.
PY - 2004/6
Y1 - 2004/6
N2 - One of the challenges in remote sensing image processing is subpixel detection where the target size is smaller than the ground sampling distance, therefore, embedded in a single pixel. Under such a circumstance, these targets can be only detected spectrally at the subpixel level, not spatially as ordinarily conducted by classical image processing techniques. This paper investigates a more challenging issue than subpixel detection, which is the estimation of target size at the subpixel level. More specifically, when a subpixel target is detected, we would like to know "what is the size of this particular target within the pixel?" The proposed approach is to estimate the abundance fraction of a subpixel target present in a pixel, then find what portion it contributes to the pixel that can be used to determine the size of the subpixel target by multiplying the ground sampling distance. In order to make our idea work, the subpixel target abundance fraction must be accurately estimated to truly reflect the portion of a subpixel target occupied within a pixel. So, a fully constrained linear unmixing method is required to reliably estimate the abundance fractions of a subpixel target for its size estimation. In this paper, a recently developed fully constrained least squares linear unmixing is used for this purpose. Experiments are conducted to demonstrate the utility of the proposed method in comparison with an unconstrained linear unmixing method, unconstrained least squares method, two partially constrained least square linear unmixing methods, sum-to-one constrained least squares, and nonnegativity constrained least squares.
AB - One of the challenges in remote sensing image processing is subpixel detection where the target size is smaller than the ground sampling distance, therefore, embedded in a single pixel. Under such a circumstance, these targets can be only detected spectrally at the subpixel level, not spatially as ordinarily conducted by classical image processing techniques. This paper investigates a more challenging issue than subpixel detection, which is the estimation of target size at the subpixel level. More specifically, when a subpixel target is detected, we would like to know "what is the size of this particular target within the pixel?" The proposed approach is to estimate the abundance fraction of a subpixel target present in a pixel, then find what portion it contributes to the pixel that can be used to determine the size of the subpixel target by multiplying the ground sampling distance. In order to make our idea work, the subpixel target abundance fraction must be accurately estimated to truly reflect the portion of a subpixel target occupied within a pixel. So, a fully constrained linear unmixing method is required to reliably estimate the abundance fractions of a subpixel target for its size estimation. In this paper, a recently developed fully constrained least squares linear unmixing is used for this purpose. Experiments are conducted to demonstrate the utility of the proposed method in comparison with an unconstrained linear unmixing method, unconstrained least squares method, two partially constrained least square linear unmixing methods, sum-to-one constrained least squares, and nonnegativity constrained least squares.
KW - Fully constrained least squares (FCLS)
KW - Fully constrained least squares linear unmixing (FCLSLU)
KW - Nonnegativity constrained least squares (NCLS)
KW - Sum-to-one constrained least squares (SCLS)
KW - Unconstrained least squares (ULS)
UR - http://www.scopus.com/inward/record.url?scp=3042511541&partnerID=8YFLogxK
U2 - 10.1109/TGRS.2004.826559
DO - 10.1109/TGRS.2004.826559
M3 - 期刊論文
AN - SCOPUS:3042511541
SN - 0196-2892
VL - 42
SP - 1309
EP - 1320
JO - IEEE Transactions on Geoscience and Remote Sensing
JF - IEEE Transactions on Geoscience and Remote Sensing
IS - 6
ER -