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| Title: | Redefining frontiers of computational imaging with deep learning | Authors: | Zhong, T Huang, H Li, H Park, YP Lai, P |
Issue Date: | Jun-2025 | Source: | Photonics insights, June 2025, v. 4, no. 2, C04 | Abstract: | In recent years, the integration of deep learning with computational imaging has fundamentally transformed optical imaging paradigms. Traditional methods encounter significant challenges when reconstructing high-dimensional information in complex scenarios[1]. By leveraging the powerful nonlinear modeling and advanced feature extraction capabilities of deep learning, these barriers have been effectively overcome, enabling end-to-end optimization—from optical system design to image reconstruction[2]. This shift transforms optoelectronic imaging from a conventional “what you see is what you get” model toward a more adaptive “what you see is what you need” approach, catalyzing breakthroughs across diverse applications including optical imaging, medical diagnostics, remote sensing, and beyond. In a seminal review recently published in Photonics Insights[3], Luo et al. systematically outlined the pivotal role of deep learning and its latest advancements within computational imaging. Figure 1 provides a schematic overview of the key concepts of the review. Their comprehensive analysis highlights how deep learning methodologies are redefining imaging technology across three transformative domains: computational optical system design, high-dimensional light-field decoding, and advanced image processing and enhancement. | Publisher: | SPIE - International Society for Optical Engineering | Journal: | Photonics insights | EISSN: | 2791-1748 | DOI: | 10.3788/PI.2025.C04 | Rights: | © The Authors. Published by CLP and SPIE under a Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/). Distribution or reproduction of this work in whole or in part requires full attribution of the original publication, including its DOI. [DOI: 10.3788/PI.2025.C04] The following publication Zhong, T., Huang, H., Li, H., Park, Y., & Lai, P. (2025). Redefining frontiers of computational imaging with deep learning. Photonics Insights, 4(2), C04-C04 is available at https://doi.org/10.3788/PI.2025.C04. |
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