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The multiview limitation of target classification by broadband echo analysis

机译:宽带回波分析的目标分类的多视角局限性

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In this paper we will present a classification technique based on the analysis of target resonances. We use a set of bio-inspired pulses derived from research on broadband signals used by bottlenose dolphins performing target detection and identification tasks. These synthetic signals are composed of high and low frequency chirps centred above and below 70 kHz. The pulses cover a similar range of frequency to those used by dolphins. A benefit of the two component system is that applying small changes to the chirp rates allows us to focus the energy of the signal on certain frequency bands. In traditional imagery, the echo is usually match filtered in order to improve signal-to-noise ratio (SNR) and localisation of responses in the intensity image. The aim here is to analyse the detailed frequency content of the echo to provide more information on target properties. Because man made objects often have a regular shape, the resonance effects will be large in comparison with an unstructured object such as rock. According to the resonance scattering theory (RST) the resonance peaks will be more pronounced for values of ka in the range 10:50, where k = 2驴 f/c is the wavenumber and a is some key target dimension. Classification is based on the analysis of the positions of the main peaks and notches within the target echo spectra. The localisation of these extrema provides the classifier input. Experiments have been performed using several objects ensonified by six different bio-inspired signals.
机译:在本文中,我们将基于目标共振分析提出一种分类技术。我们使用了一组生物启发性脉冲,这些脉冲源自对宽吻海豚执行目标检测和识别任务所使用的宽带信号的研究。这些合成信号由位于70 kHz上方和下方的高频和低频low组成。脉冲覆盖的频率范围与海豚使用的频率相似。两分量系统的一个好处是,对线性调频率应用很小的变化就可以使我们将信号的能量集中在某些频带上。在传统图像中,通常对回波进行匹配滤波,以提高信噪比(SNR)和强度图像中响应的定位。此处的目的是分析回波的详细频率内容,以提供有关目标属性的更多信息。由于人造物体通常具有规则的形状,因此与非结构化物体(例如岩石)相比,共振效果会更大。根据共振散射理论(RST),对于在10:50范围内的ka值,共振峰将更加明显,其中k = 2驴f / c是波数,而a是一些关键的目标尺寸。分类基于对目标回波频谱内主峰和陷波位置的分析。这些极值的本地化提供了分类器输入。已经使用由六个不同的生物启发信号声化的几个物体进行了实验。

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