Blind super-resolution can be cast as a low rank matrix recovery problem by exploiting the inherent simplicity of the signal and the low dimensional structure of point spread functions. In this paper, we develop a simple yet efficient non-convex projected gradient descent method for this problem based on the low rank structure of the vectorized Hankel matrix associated with the target matrix. Theoretical analysis indicates that the proposed method exactly converges to the target matrix with a linear convergence rate under the similar conditions as convex approaches. Numerical results show that our approach is competitive with existing convex approaches in terms of recovery ability and efficiency.
翻译:通过利用信号的内在简单性和点扩展功能的低维结构,盲人超分辨率可被视为一个低级矩阵恢复问题。在本文件中,我们根据与目标矩阵相关的矢量式汉克尔矩阵的低级结构,为这一问题制定了一个简单而有效的非曲线预测梯度下降方法。理论分析表明,拟议方法与目标矩阵完全一致,在与曲线方法相似的条件下线性趋同率。数字结果显示,我们的方法在恢复能力和效率方面与现有的曲线方法相比具有竞争力。