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根据图像质量预测安全X光图像的检测性能

Predicting Detection Performance on Security X-Ray Images as a Function of Image Quality.

作者信息

Gupta Praful, Sinno Zeina, Glover Jack L, Paulter Nicholas G, Bovik Alan C

出版信息

IEEE Trans Image Process. 2019 Jul;28(7):3328-3342. doi: 10.1109/TIP.2019.2896488. Epub 2019 Jan 31.

Abstract

Developing methods to predict how image quality affects the task performance is a topic of great interest in many applications. While such studies have been performed in the medical imaging community, little work has been reported in the security X-ray imaging literature. In this paper, we develop models that predict the effect of image quality on the detection of the improvised explosive device components by bomb technicians in images taken using portable X-ray systems. Using a newly developed NIST-LIVE X-Ray Task Performance Database, we created a set of objective algorithms that predict bomb technician detection performance based on the measures of image quality. Our basic measures are traditional image quality indicators (IQIs) and perceptually relevant natural scene statistics (NSS)-based measures that have been extensively used in visible light image quality prediction algorithms. We show that these measures are able to quantify the perceptual severity of degradations and can predict the performance of expert bomb technicians in identifying threats. Combining NSS- and IQI-based measures yields even better task performance prediction than either of these methods independently. We also developed a new suite of statistical task prediction models that we refer to as quality inspectors of X-ray images (QUIX); we believe this is the first NSS-based model for security X-ray images. We also show that QUIX can be used to reliably predict conventional IQI metric values on the distorted X-ray images.

摘要

开发预测图像质量如何影响任务性能的方法是许多应用中备受关注的一个话题。虽然医学成像领域已经开展了此类研究,但安全X射线成像文献中报道的相关工作较少。在本文中,我们开发了一些模型,用于预测在使用便携式X射线系统拍摄的图像中,图像质量对拆弹技术人员检测简易爆炸装置组件的影响。利用新开发的NIST-LIVE X射线任务性能数据库,我们创建了一组客观算法,这些算法基于图像质量度量来预测拆弹技术人员的检测性能。我们的基本度量是传统的图像质量指标(IQIs)以及基于感知相关自然场景统计(NSS)的度量,这些度量已在可见光图像质量预测算法中广泛使用。我们表明,这些度量能够量化图像退化的感知严重程度,并能预测专家拆弹技术人员识别威胁的性能。将基于NSS和IQI的度量相结合,比单独使用这两种方法中的任何一种都能产生更好的任务性能预测。我们还开发了一套新的统计任务预测模型,我们将其称为X射线图像质量检查器(QUIX);我们相信这是第一个基于NSS的安全X射线图像模型。我们还表明,QUIX可用于可靠地预测失真X射线图像上的传统IQI度量值。

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Predicting Detection Performance on Security X-Ray Images as a Function of Image Quality.根据图像质量预测安全X光图像的检测性能
IEEE Trans Image Process. 2019 Jul;28(7):3328-3342. doi: 10.1109/TIP.2019.2896488. Epub 2019 Jan 31.
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本文引用的文献

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Predicting the Quality of Fused Long Wave Infrared and Visible Light Images.预测融合长波红外与可见光图像的质量。
IEEE Trans Image Process. 2017 Jul;26(7):3479-3491. doi: 10.1109/TIP.2017.2695898. Epub 2017 Apr 19.
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