AI RESEARCH

Deep Probabilistic Unfolding for Quantized Compressive Sensing

arXiv CS.CV

ArXi:2605.11475v1 Announce Type: new We propose a deep probabilistic unfolding model to address the classical quantized compressive sensing problem that leverages an unfolding framework to enhance the reconstruction accuracy and efficiency. Unlike previous unfolding methods that apply L2 projection to measurements, we derive a closed-form, numerically stable likelihood gradient projection, which allows the model to respect the true quantization physics, turning the hard quantization constraint into a soft probabilistic guidance.