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arxiv: 2512.18508 · v3 · pith:XLY2XIA7new · submitted 2025-12-20 · 📊 stat.ME · cs.AI· cs.SY· eess.SP· eess.SY

Selection-Induced Contraction of Innovation Statistics in Gated Kalman Filters

classification 📊 stat.ME cs.AIcs.SYeess.SPeess.SY
keywords innovationgatingcontractionstatisticsassociationclassicalmeasurementsnominal
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Validation gating is a fundamental component of classical Kalman-based tracking systems. Only measurements whose normalized innovation squared (NIS) falls below a prescribed threshold are considered for state update. While this procedure is statistically motivated by the chi-square distribution, it implicitly replaces the unconditional innovation process with a conditionally observed one, restricted to the validation event. This paper shows that innovation statistics computed after gating converge to gate-conditioned rather than nominal quantities. Under classical linear--Gaussian assumptions, we derive exact expressions for the first- and second-order moments of the innovation conditioned on ellipsoidal gating, and show that gating induces a deterministic, dimension-dependent contraction of the innovation covariance. The analysis is extended to NN association, which is shown to act as an additional statistical selection operator. We prove that selecting the minimum-norm innovation among multiple in-gate measurements introduces an unavoidable energy contraction, implying that nominal innovation statistics cannot be preserved under nontrivial gating and association. Closed-form results in the two-dimensional case quantify the combined effects and illustrate their practical significance.

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