根据图像和元数据实时估计摄影系统的噪声源

IF 6.8 Q1 AUTOMATION & CONTROL SYSTEMS Advanced intelligent systems (Weinheim an der Bergstrasse, Germany) Pub Date : 2024-04-26 DOI:10.1002/aisy.202300479
Maik Wischow, Patrick Irmisch, Anko Boerner, Guillermo Gallego
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引用次数: 0

摘要

自动机器必须自我维持适当的功能,以确保人类和自身的安全。这尤其与作为感知环境和支持行动的主要传感器的摄像头有关。本研究涉及的一个基本摄像头问题是噪声。解决方案通常侧重于对图像进行事后去噪,即治标不治本。然而,考虑到移动平台的局限性,要从根本上解决问题,就必须找出噪声源。在这项工作中,我们研究了一种实时、内存效率高、可靠的噪声源估计器,它结合了基于数据的模型和基于物理的模型。为此,我们构建并训练了一个深度神经网络,该网络可检查带有相机元数据的图像,找出主要的相机噪点来源。此外,它还能量化影响图像噪点或元数据的意外因素。本研究在六个数据集上研究了七种不同的估算器,这些数据集包括合成噪点、来自两个相机系统的真实世界噪点以及真实的现场活动。在这些数据集中,只有元数据最多的模型能够准确、稳健地量化所有单独的噪声贡献。这种方法优于总体图像噪声估计方法,可以即插即用。它还可作为包括更高级噪声源的基础,或作为自动对策反馈回路的一部分,以接近完全可靠的机器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Real-Time Noise Source Estimation of a Camera System from an Image and Metadata

Autonomous machines must self-maintain proper functionality to ensure the safety of humans and themselves. This pertains particularly to its cameras as predominant sensors to perceive the environment and support actions. A fundamental camera problem addressed in this study is noise. Solutions often focus on denoising images a posteriori, that is, fighting symptoms rather than root causes. However, tackling root causes requires identifying the noise sources, considering the limitations of mobile platforms. In this work, a real-time, memory-efficient, and reliable noise source estimator that combines data-based and physically based models is investigated. To this end, a deep neural network that examines an image with camera metadata for major camera noise sources is built and trained. In addition, it quantifies unexpected factors that impact image noise or metadata. This study investigates seven different estimators on six datasets that include synthetic noise, real-world noise from two camera systems, and real-field campaigns. For these, only the model with most metadata is capable to accurately and robustly quantify all individual noise contributions. This method outperforms total image noise estimators and can be plug-and-play deployed. It also serves as a basis to include more advanced noise sources, or as part of an automatic countermeasure feedback loop to approach fully reliable machines.

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CiteScore
1.30
自引率
0.00%
发文量
0
审稿时长
4 weeks
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