Yaxi Yang, Hailin Wang, Haiquan Qiu, Jianjun Wang, Yao Wang
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引用次数: 1
摘要
本文利用生成模型引入信号的结构性质来代替常见的稀疏假设,提出了一种基于生成模型(q-Gen)的非凸压缩感知稀疏偏差模型。通过建立受限等距特性(q- rip)的q变异体和集限制特征值条件(q- s - rec),推导了恢复信号在发生器稀疏偏差范围内时最优解码器的误差上界。进一步证明了满足一定测量数的高斯矩阵足以保证生成函数具有高概率的良好恢复。最后,通过一系列实验验证了该模型的有效性和优越性。
Non-Convex Sparse Deviation Modeling Via Generative Models
In this paper, the generative model is used to introduce the structural properties of the signal to replace the common sparse hypothesis, and a non-convex compressed sensing sparse deviation model based on the generative model (ℓq-Gen) is proposed. By establishing ℓq variant of the restricted isometry property (q-RIP) and Set-Restricted Eigenvalue Condition (q-S-REC), the error upper bound of the optimal decoder is derived when the recovered signal is within the sparse deviation range of the generator. Furthermore, it is proved that the Gaussian matrix satisfying a certain number of measurements is sufficient to ensure a good recovery for the generating function with high probability. Finally, a series of experiments are carried out to verify the effectiveness and superiority of the ℓq-Gen model.