We consider the problem of tracking, in realtime, an unstable autoregressive (AR) source over a discrete memory-less channel (DMC). We present computable achievable bounds on the optimal tracking error for general DMC...
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We consider the problem of tracking, in realtime, an unstable autoregressive (AR) source over a discrete memory-less channel (DMC). We present computable achievable bounds on the optimal tracking error for general DMCs, and we particularize these bounds to the binary erasure, packet erasure, and binary symmetric channels. The achievable bounds in this paper are proved using a partially separate source quantization and channel coding architecture. We do not use complete or strict separation in usual Shannon sense: 1) the quantiser's resolution is optimized against the error-correction capabilities of the channel code and the channel code is optimized against an AR Hamming distortion function matched to the source (a weighted Hamming distortion function that provides unequal error protection to different parts of the AR source). The achievability results for general DMCs are proved by combining the AR Hamming distortion function with new realtime (streaming) versions of the random coding union and dependence testing bounds. When applied to erasure channels, these general bounds combine with simple converses to demonstrate that the channel's cutoff rate plays an important role in realtime tracking.
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