Track-before-detect algorithms for bistatic sonars

D. Orlando, F. Ehlers, G. Ricci
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引用次数: 32

Abstract

Track-before-detect (TBD) algorithms can improve track accuracy and follow low signal-to-noise ratio targets. A price paid for this increased performance is the high computational complexity of TBD implementations. In this work, we develop a new TBD approach capable of handling raw hydrophone data. In order to learn more about its performance and feasibility when applied to sonar, we use data from the sea trial PreDEMUS'06 with DEMUS sensor array of NATO Undersea Research Centre. As a first step, we introduce the sensor model for a bistatic sonar based on DEMUS receivers. Then, we formulate the TBD problem at hand as a binary hypothesis testing problem and derive a class of adaptive algorithms by using design procedures based upon the generalized likelihood ratio test. Remarkably, such detectors guarantee the constant false track acceptance rate property under the design assumptions with respect to the overall spectral properties of the noise. A preliminary performance analysis is presented. Finally, we discuss its potential to implement automatic track continuation and to prepare automatic classification for temporarily weak targets as these tasks are usually the challenges multistatic sonar systems have to overcome.
双基地声纳的探测前跟踪算法
检测前跟踪(TBD)算法可以提高跟踪精度和跟踪低信噪比目标。这种性能提高的代价是TBD实现的高计算复杂性。在这项工作中,我们开发了一种新的TBD方法,能够处理原始水听器数据。为了进一步了解其应用于声纳时的性能和可行性,我们使用了北约海底研究中心的DEMUS传感器阵列PreDEMUS'06海试数据。首先,介绍了基于DEMUS接收机的双基地声呐传感器模型。然后,我们将手边的TBD问题表述为二元假设检验问题,并利用基于广义似然比检验的设计程序推导出一类自适应算法。值得注意的是,这种检测器在设计假设下,相对于噪声的整体频谱特性,保证了恒定的误航迹接受率。给出了初步的性能分析。最后,我们讨论了它在实现自动航迹延续和为临时弱目标准备自动分类方面的潜力,因为这些任务通常是多基地声纳系统必须克服的挑战。
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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