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Pitre et al., 2005 - Google Patents

A comparative study of multiple-model algorithms for maneuvering target tracking

Pitre et al., 2005

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Document ID
7633600925620454461
Author
Pitre R
Jilkov V
Li X
Publication year
Publication venue
Signal Processing, Sensor Fusion, and Target Recognition XIV

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Many multiple-model (MM) algorithms for tracking maneuvering targets are available, but there are few comparative studies of their performance. This work compares seven MM algorithms for maneuvering target tracking in terms of tracking performance and …
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