Compressive Imaging Reconstruction via Tensor Decomposed Multi-Resolution Grid Encoding
Journal:
arXiv
Published Date:
Jul 10, 2025
Abstract
Compressive imaging (CI) reconstruction, such as snapshot compressive imaging
(SCI) and compressive sensing magnetic resonance imaging (MRI), aims to recover
high-dimensional images from low-dimensional compressed measurements. This
process critically relies on learning an accurate representation of the
underlying high-dimensional image. However, existing unsupervised
representations may struggle to achieve a desired balance between
representation ability and efficiency. To overcome this limitation, we propose
Tensor Decomposed multi-resolution Grid encoding (GridTD), an unsupervised
continuous representation framework for CI reconstruction. GridTD optimizes a
lightweight neural network and the input tensor decomposition model whose
parameters are learned via multi-resolution hash grid encoding. It inherently
enjoys the hierarchical modeling ability of multi-resolution grid encoding and
the compactness of tensor decomposition, enabling effective and efficient
reconstruction of high-dimensional images. Theoretical analyses for the
algorithm's Lipschitz property, generalization error bound, and fixed-point
convergence reveal the intrinsic superiority of GridTD as compared with
existing continuous representation models. Extensive experiments across diverse
CI tasks, including video SCI, spectral SCI, and compressive dynamic MRI
reconstruction, consistently demonstrate the superiority of GridTD over
existing methods, positioning GridTD as a versatile and state-of-the-art CI
reconstruction method.