Strong non-uniformity correction algorithm based on spectral shaping statistics and LMS

Author:

Liu Tong1,Sui XiubaoORCID,Wang Yihong,Wang Yu,Chen Qian,Guan Zhiwei1,Chen Xingliao1

Affiliation:

1. Tianjin Sino-German University of Applied Sciences

Abstract

The existence of non-uniformity in infrared detector output images is a widespread problem that significantly degrades image quality. Existing scene-based non-uniformity correction algorithms typically struggle to balance strong non-uniformity correction with scene adaptability. To address this issue, we propose a novel scene-based algorithm that leverages the frequency characteristics of the non-uniformity, combine and improve single-frame stripe removal, multi-scale statistics, and least mean square (LMS) methods. Following the “coarse-to-fine” correction process, the coarse correction stage introduces an adaptive progressive correction strategy based on Laplacian pyramids. By improving 1-D guided filtering and high-pass filtering to shape high-frequency sub-bands, non-uniformity can be well separated from the scene, effectively suppressing ghosting. In the fine correction stage, we optimize the expected image estimation and spatio-temporal adaptive learning rates based on guided filtering LMS method. To validate the efficacy of our algorithm, we conduct extensive simulation and real experiments, demonstrating its adaptability to various scene conditions and its effectiveness in correcting strong non-uniformity.

Funder

National Natural Science Foundation of China

Leading Technology of Jiangsu Basic Research Plan

Fundamental Research Funds for the Central Universities

Funds of the Key Laboratory of National Defense Science and Technology

Publisher

Optica Publishing Group

Subject

Atomic and Molecular Physics, and Optics

Reference37 articles.

1. Infrared focal plane array technology

2. The Laplacian Pyramid as a Compact Image Code

3. Nonuniformity two-point linear correction errors in infrared focal plane arrays

4. Teledyne FLIR , “ Free Teledyne FLIR thermal dataset for algorithm training ,” Teledyne FLIR ( 2018 ), https://www.flir.com/oem/adas/adas-dataset-form/ .

5. ASL , “ Thermal Infrared Dataset ,” ASL 2014 , https://projects.asl.ethz.ch/datasets/doku.php?id=ir:iricra2014 .

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