Structural processing of waveforms as trees

S. Shaw, R. Figueiredo
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引用次数: 30

Abstract

Waveforms may be represented symbolically such that their underlying, global structural composition is emphasized. One such symbolic representation is the relational tree. The relational tree is a computer data structure that describes the relative size and placement of peaks and valleys in a waveform. Researchers have developed various distance measures which serve as tree metrics. A tree metric defines a tree space. We are able to cluster groups of trees by their proximity in a tree space. Linear discriminants are used to reduce vector space dimensionality and to improve cluster performance. A tree transformation operating on a regular tree language accomplishes this same goal in a tree space. Under certain restrictions, relational trees form a regular tree language. Combining these concepts yields a waveform recognition system. This system recognizes waveforms even when they have undergone a monotonic transformation of the time axis. The system performs well with high signal to noise ratios, but further refinements are necessary for a working waveform interpretation system.
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作为树的波形的结构处理
波形可以用符号表示,以强调其潜在的全局结构组成。一种这样的符号表示是关系树。关系树是一种计算机数据结构,它描述了波形中波峰和波谷的相对大小和位置。研究人员开发了各种距离测量方法,作为树的度量标准。树度量定义了树空间。我们可以通过树木在树空间中的接近度来对树群进行聚类。线性判别法用于降低向量空间维数,提高聚类性能。在常规树形语言上操作的树形转换在树形空间中实现了相同的目标。在一定的限制下,关系树形成了一种规则的树语言。结合这些概念产生了一个波形识别系统。即使波形经过时间轴的单调变换,该系统也能识别波形。该系统在高信噪比下表现良好,但需要进一步改进才能使波形解释系统正常工作。
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