Affiliation:
1. Communication University of Shanxi
2. Henan University of Animal Husbandry and Economy
Abstract
The traditional digital three-dimensional (3D) display suffers from low resolution and a narrow depth of field (DoF) due to the lack of planar pixels transformed into view perspectives and the limitation of the diffraction effect of the lens, respectively, which are the main drawbacks to restrict the commercial application of this display technology. Here, the neural network-enabled multilayer view perspective fitting between the reconstructed and original view perspectives across the desired viewing depth range is proposed to render the optimal elemental image array (EIA) for enhancing the viewing resolution as well as the DoF of the digital 3D display. Actually, it is an end-to-end result-oriented coding method to render the fusion EIA with optimal multidepth fusion and resolution enhancement with high registration accuracies for both view perspective and depth reconstructions by using a depth-distributed fitting neural network paradigm. The 3D images presented in the simulations and optical experiments with improved viewing resolution and extended viewing depth range are demonstrated, verifying the feasibility of the proposed method.
Funder
Doctoral research fund of Henan University of Animal Husbandry and Economy
Henan province key science and technology research projects
High-level Talent Research Startup Fund of Communication University of Shanxi
Scientific and Technological Innovation Programs of Higher Education Institutions in Shanxi
Applied Basic Research Project of Shanxi Province, China