It has been an important approach of using matrix completion to perform image
restoration. Most previous works on matrix completion focus on the low-rank
property by imposing explicit constraints on the recovered matrix, such as the
constraint of the nuclear norm or limiting the dimension of the matrix
factorization component. Recently, theoretical works suggest that deep linear
neural network has an implicit bias towards low rank on matrix completion.
However, low rank is not adequate to reflect the intrinsic characteristics of a
natural image. Thus, algorithms with only the constraint of low rank are
insufficient to perform image restoration well. In this work, we propose a
Regularized Deep Matrix Factorized (RDMF) model for image restoration, which
utilizes the implicit bias of the low rank of deep neural networks and the
explicit bias of total variation. We demonstrate the effectiveness of our RDMF
model with extensive experiments, in which our method surpasses the state of
art models in common examples, especially for the restoration from very few
observations. Our work sheds light on a more general framework for solving
other inverse problems by combining the implicit bias of deep learning with
explicit regularization