The content discusses the problem of indirect quantization, where the goal is to quantize an observed vector of measurements X in order to allow reconstruction of an unobserved source vector S with minimal distortion, measured by mean-squared error (MSE).
The key insights are:
For indirect quantization, the problem can be reduced to a standard (direct) quantization problem via a two-step approach: first apply the conditional expectation estimator to obtain a "virtual" source, then solve for the optimal quantizer for the latter source. However, this approach is not beneficial when the quantizer is constrained to have contiguous quantization cells.
Necessary conditions for optimality of threshold-constrained indirect scalar quantization are derived, generalizing the Lloyd-Max conditions. An iterative algorithm is proposed for the design of such quantizers.
For the case of a scalar observation, optimal threshold-constrained and rate-constrained indirect quantizers are derived using dynamic programming algorithms, extending the results of Bruce for the direct quantization problem.
The results for the scalar observation case are extended to the vector observation case, deriving necessary conditions for optimality of threshold-constrained indirect vector quantization.
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by Ariel Doubch... lúc arxiv.org 09-12-2024
https://arxiv.org/pdf/2409.06839.pdfYêu cầu sâu hơn