Title :
Detecting small, moving objects in image sequences using sequential hypothesis testing
Author :
Blostein, Steven D. ; Huang, Thomas S.
Author_Institution :
Dept. of Electr. Eng., Queen´´s Univ., Kingston, Ont., Canada
fDate :
7/1/1991 12:00:00 AM
Abstract :
An algorithm is proposed for the solution of the class of multidimensional detection problems concerning the detection of small, barely discernible, moving objects of unknown position and velocity in a sequence of digital images. A large number of candidate trajectories, organized into a tree structure, are hypothesized at each pixel in the sequence and tested sequentially for a shift in mean intensity. The practicality of the algorithm is facilitated by the use of multistage hypothesis testing (MHT) for simultaneous inference, as well as the existence of exact, closed-form expressions for MHT test performance in Gaussian white noise (GWN). These expressions predict the algorithm´s computation and memory requirements, where it is shown theoretically that several orders of magnitude of processing are saved over a brute-force approach based on fixed sample-size tests. The algorithm is applied to real data by using a robust preprocessing procedure to eliminate background structure and transform the image sequence into a residual representation, modeled as GWN. Results are verified experimentally on a variety of video image sequences
Keywords :
interference (signal); picture processing; white noise; Gaussian white noise; algorithm; computation requirements; digital images; inference; mean intensity; memory requirements; moving objects detection; multidimensional detection problems; multistage hypothesis testing; picture processing; position; preprocessing procedure; residual representation; trajectories; tree structure; using sequential hypothesis testing; velocity; video image sequences; Closed-form solution; Digital images; Image sequences; Inference algorithms; Multidimensional systems; Object detection; Sequential analysis; Testing; Tree data structures; White noise;
Journal_Title :
Signal Processing, IEEE Transactions on