Title :
Stochastic model-based processing for detection of small targets in non-Gaussian natural imagery
Author :
Chapple, Philip B. ; Bertilone, Derek C. ; Caprari, Robert S. ; Newsam, Garry N.
Author_Institution :
DSTO, Pyrmont, NSW, Australia
fDate :
4/1/2001 12:00:00 AM
Abstract :
Stochastic background models incorporating spatial correlations can be used to enhance the detection of targets in natural terrain imagery, but are generally difficult to apply when the statistics are non-Gaussian. Chapple and Bertilone (see Opt. Commun., vol.150, p.71-76, 1998) proposed a simple stochastic model for images of natural backgrounds based on the pointwise nonlinear transformation of Gaussian random fields, and demonstrated its effectiveness and computational efficiency in modeling the textures found in natural terrain imagery acquired from airborne IR sensors. In this paper, we show how this model can be used to design algorithms that detect small targets (up to several pixels in size) in natural imagery by identifying anomalous regions of the image where the statistics differ significantly from the rest of the background. All of the model-based algorithms described here involve nonlinear spatial processing prior to the final decision threshold. Monte Carlo testing reveals that the model-based algorithms generally perform better than both the adaptive threshold filter and the generalized matched filter for detecting low-contrast targets, despite the fact that they do not require the target statistics needed for constructing the matched filter
Keywords :
Monte Carlo methods; image processing; image texture; object detection; stochastic processes; Gaussian random fields; Monte Carlo testing; adaptive threshold filter; airborne IR sensors; computational efficiency; generalized matched filter; image texture; low-contrast targets; model-based algorithms; natural terrain imagery; nonGaussian natural imagery; nonGaussian statistics; nonlinear spatial processing; pixels; pointwise nonlinear transformation; small targets detection; spatial correlations; stochastic background models; stochastic model-based processing; Algorithm design and analysis; Computational efficiency; Computational modeling; Image sensors; Infrared image sensors; Matched filters; Optimized production technology; Pixel; Statistics; Stochastic processes;
Journal_Title :
Image Processing, IEEE Transactions on