压缩成像和视频技术在威胁检测中的应用比较

J. Limbach, C. Eisele
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引用次数: 1

摘要

高性能成像传感器是许多国防和安全应用的基本要求。然而,这种传感器的高昂成本阻碍了它们的广泛部署。像压缩感知(CS)这样的现代计算成像方法承诺具有成本效益的传感器架构,可能会使某些传感器技术得到更广泛的应用。但是,军事应用的技术潜力仍有待核查。为了测试cs系统检测威胁的能力,实现了一个自动化测试的软件框架。代码包含场景调制和图像重建的不同方法。在我们之前的工作中,我们研究了经典的图像重建迭代优化方法,结果很有希望,但并不完全令人满意。因此,我们实现了另一种方法。这种CS视频方法是“傅立叶域正则化反演”(FDRI),它保证了实时的单像素视频成像。在本文提出的研究中,我们将这种新方法与已经实现的优化方法进行了比较,包括运行时间、传统图像质量指标和不同光谱波段威胁检测应用的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of compressive imaging and video techniques for threat detection applications
High performance imaging sensors are a fundamental requirement for many defense and security applications. The usually high cost of such sensors, however, prevents their broad deployment. Modern Computational Imaging approaches like Compressed Sensing (CS) promise cost efficient sensor architectures that might enable a wider usage of some sensor technologies. However, the technological potential for military applications still has to be verified. In order to test the capabilities of a CS-system for threat detection, a software framework for automated testing was implemented. The code contains different methods for scene modulation and image reconstruction. In our previous work, we studied the classic iterative optimization methods for image reconstruction with promising, but not completely satisfactory results. Therefore, we implemented another method. This CS video method is the ‘Fourier domain regularized inversion’ (FDRI) which promises real time single pixel video imaging. In the study presented here, we compare the rather new method with the already implemented optimization approaches regarding runtime, conventional image quality metrics and suitability for threat detection applications in different spectral bands.
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