General Engineering Research Institute, Liverpool John Moores University, Byrom Street, Liverpool L3 3AF, United Kingdom.
Ultrasonics. 2012 Mar;52(3):351-63. doi: 10.1016/j.ultras.2011.10.001. Epub 2011 Oct 10.
Many sparse signal representation (SSR) algorithms have been developed in the past decade. The advantages of SSR such as compact representations and super resolution lead to the state of the art performance of SSR for processing ultrasonic non-destructive evaluation (NDE) signals. Choosing a suitable SSR algorithm and designing an appropriate overcomplete dictionary is a key for success. After a brief review of sparse signal representation methods and the design of overcomplete dictionaries, this paper addresses the recent accomplishments of SSR for processing ultrasonic NDE signals. The advantages and limitations of SSR algorithms and various overcomplete dictionaries widely-used in ultrasonic NDE applications are explored in depth. Their performance improvement compared to conventional signal processing methods in many applications such as ultrasonic flaw detection and noise suppression, echo separation and echo estimation, and ultrasonic imaging is investigated. The challenging issues met in practical ultrasonic NDE applications for example the design of a good dictionary are discussed. Representative experimental results are presented for demonstration.
过去十年中已经开发了许多稀疏信号表示(SSR)算法。SSR 的优点,如紧凑表示和超分辨率,导致 SSR 在处理超声无损检测(NDE)信号方面具有最先进的性能。选择合适的 SSR 算法和设计合适的过完备字典是成功的关键。在简要回顾稀疏信号表示方法和过完备字典的设计之后,本文介绍了 SSR 处理超声 NDE 信号的最新成果。深入探讨了 SSR 算法和各种在超声 NDE 应用中广泛使用的过完备字典的优缺点。研究了它们在超声缺陷检测和噪声抑制、回波分离和回波估计以及超声成像等许多应用中与传统信号处理方法相比的性能提高。讨论了在实际超声 NDE 应用中遇到的挑战性问题,例如良好字典的设计。为了进行演示,还给出了有代表性的实验结果。