Paper
1 August 1991 Multiple-hypothesis-based multiple-sensor spatial data fusion algorithm
Dominic S. P. Leung, D. Scot Williams
Author Affiliations +
Abstract
With the projected increase in sophistication of potential threats and their associated countermeasures, the next generation of military operations cannot rely on a single sensor for threat information. The prudent choice of sensor suite in a given setting will avail a wider variety of statistically independent measurements, thus providing more resources for the tracking and classification of targets of interest. One basic problem in data fusion/target classification is to find reliable ways to correlate tracks originating from the same target using the attributes of individual sensor tracks. That practically all sensors provide some form of spatial track data accounts for the fact that spatial data fusion is the most commonly used data fusion technique. An algorithm for correlating all tracks from different sensors based on their spatial characteristics is presented in this paper. The technique used here is an extension of the multiple-hypothesis technique for tracking multiple targets in a cluttered environment. In this multiple-hypothesis correlation approach, all feasible correlation hypotheses are considered and maintained for at least a short period of time. The likelihoods for these hypotheses to be correct are evaluated and updated with the arrival of new data. The unlikely ones are periodically pruned with the most highly probable ones being retained. By using Kalman filtering techniques, the state estimates of each of the fusion hypotheses that survive have a smaller error covariance than any of the tracks from which they were derived.
© (1991) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Dominic S. P. Leung and D. Scot Williams "Multiple-hypothesis-based multiple-sensor spatial data fusion algorithm", Proc. SPIE 1471, Automatic Object Recognition, (1 August 1991); https://doi.org/10.1117/12.44889
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CITATIONS
Cited by 6 scholarly publications.
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KEYWORDS
Sensors

Data fusion

Filtering (signal processing)

Composites

Radar

Electronic support measures

Infrared sensors

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