Abstract :
Prediction is an essential operation in many image
processing applications, such as object detection and image and
video compression. When the images are modeled as Gaussian,
the optimal predictor is linear and easy to obtain. However, image
texture and clutter are often non-Gaussian, and, in such cases,
optimal predictors are difficult to obtain. In this paper, we derive
an optimal predictor for an important class of non-Gaussian
image models, the block-based multivariate Gaussian mixture
model. This predictor has a special nonlinear structure: it is a
linear combination of the neighboring pixels, but the combination
coefficients are also functions of the neighboring pixels, not
constants. The efficacy of this predictor is demonstrated in object
detection experiments where the prediction error image is used
to identify “hidden” objects. Experimental results indicate that
when the background texture is nonlinear, i.e., with fast-switching
gray-level patches, it performs significantly better than the
optimal linear predictor.
Keywords :
Gaussian mixture , Image modeling , Object detection , prediction.