QCS-SGM+: Improved Quantized Compressed Sensing with Score-Based Generative Models

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Abstract

In practical compressed sensing (CS), the obtained measurements typically necessitate quantization to a limited number of bits prior to transmission or storage. This nonlinear quantization process poses significant recovery challenges, particularly with extreme coarse quantization such as 1-bit. Recently, an efficient algorithm called QCS-SGM was proposed for quantized CS (QCS) which utilizes score-based generative models (SGM) as an implicit prior. Due to the adeptness of SGM in capturing the intricate structures of natural signals, QCS-SGM substantially outperforms previous QCS methods. However, QCS-SGM is constrained to (approximately) row-orthogonal sensing matrices as the computation of the likelihood score becomes intractable otherwise. To address this limitation, we introduce an advanced variant of QCS-SGM, termed QCS-SGM+, capable of handling general matrices effectively. The key idea is a Bayesian inference perspective on the likelihood score computation, wherein expectation propagation is employed for its approximate computation. Extensive experiments are conducted, demonstrating the substantial superiority of QCS-SGM+ over QCS-SGM for general sensing matrices beyond mere row-orthogonality.

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APA

Meng, X., & Kabashima, Y. (2024). QCS-SGM+: Improved Quantized Compressed Sensing with Score-Based Generative Models. In Proceedings of the AAAI Conference on Artificial Intelligence (Vol. 38, pp. 14341–14349). Association for the Advancement of Artificial Intelligence. https://doi.org/10.1609/aaai.v38i13.29347

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