Singh Maneesha, Singh Sameer, Partridge Derek
Autonomous Technologies Research, Department of Computer Science, University of Exeter, Exeter EX4 4QF, UK.
IEEE Trans Syst Man Cybern B Cybern. 2004 Dec;34(6):2354-65. doi: 10.1109/tsmcb.2004.835077.
The main aim of this paper is to present a knowledge-based framework for automatically selecting the best image enhancement algorithm from several available on a per image basis in the context of X-ray images of airport luggage. The approach detailed involves a system that learns to map image features that represent its viewability to one or more chosen enhancement algorithms. Viewability measures have been developed to provide an automatic check on the quality of the enhanced image, i.e., is it really enhanced? The choice is based on ground-truth information generated by human X-ray screening experts. Such a system, for a new image, predicts the best-suited enhancement algorithm. Our research details the various characteristics of the knowledge-based system and shows extensive results on real images.
本文的主要目的是提出一个基于知识的框架,用于在机场行李X光图像的背景下,根据每幅图像从几种可用的算法中自动选择最佳图像增强算法。详细介绍的方法涉及一个系统,该系统学习将表示图像可视性的图像特征映射到一种或多种选定的增强算法。已经开发出可视性度量来自动检查增强图像的质量,即它是否真的得到了增强?选择是基于人类X光安检专家生成的真实信息。这样一个系统,对于一幅新图像,可以预测最适合的增强算法。我们的研究详细阐述了基于知识的系统的各种特性,并展示了在真实图像上的广泛结果。