eth-siplab/Frequency-weighted-neural-Kalman-filters
FW-NKF: Frequency-Weighted Neural Kalman Filters -- Official implementation. Learnable IIR filtering of Kalman innovations with spectral supervision for robust state estimation under frequency-localized sensor noise.
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MIT
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Mar 05, 2026
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