1991
DOI: 10.1109/78.134399
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Detecting small, moving objects in image sequences using sequential hypothesis testing

Abstract: A new algorithm is proposed for the solution of an important class of multidimensional detection problems: 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, orgavized into a tree structure, are hypothesized at each pixel io the sequence and tested sequentially for a shift in mean intensity. The practicality of the algorithm is facilitated by the use of multistage bypothesis testing (MHT) for sim… Show more

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Cited by 190 publications
(69 citation statements)
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“…Other related research has worked on developing target motion estimators, e.g. [22,23,24,25]. These, however, are focused more on estimating models (usually smooth, periodic or planar models) of the moving targets.…”
Section: Background and Constraintsmentioning
confidence: 99%
“…Other related research has worked on developing target motion estimators, e.g. [22,23,24,25]. These, however, are focused more on estimating models (usually smooth, periodic or planar models) of the moving targets.…”
Section: Background and Constraintsmentioning
confidence: 99%
“…Temporal filtering schemes 8,9 use information from a set of previous frames for estimating the background information at PUT. The temporal filtering schemes can provide the better estimate for the background due to high correlation between successively sampled images.…”
Section: Temporal Filtering Techniquesmentioning
confidence: 99%
“…(2) Multistage Hypothesis Testing Blostein and Huang [163] proposed a multistage hypothesis testing algorithm (MSHT) for target tacking and detection. The MSHT algorithm uses a truncated sequential probability ratio test (TSPRT), to efficiently evaluate a dense tree of linear, constant velocity candidate trajectory segments [164].…”
Section: ) Projective Transformsmentioning
confidence: 99%