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Curve matching, time warping, and light fields: New algorithms for computing similarity between curves

机译:曲线匹配,时间扭曲和光场:用于计算曲线之间相似度的新算法

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The problem of curve matching appears in many application domains, like time series analysis, shape matching, speech recognition, and signature verification, among others. Curve matching has been studied extensively by computational geometers, and many measures of similarity have been examined, among them being the Frechet distance (sometimes referred in folklore as the "dog-man" distance). A measure that is very closely related to the Frechet distance but has never been studied in a geometric context is the Dynamic Time Warping measure (DTW), first used in the context of speech recognition. This measure is ubiquitous across different domains, a surprising fact because notions of similarity usually vary significantly depending on the application. However, this measure suffers from some drawbacks, most importantly the fact that it is defined between sequences of points rather than curves. Thus, the way in which a curve is sampled to yield such a sequence can dramatically affect the quality of the result. Some attempts have been made to generalize the DTW to continuous domains, but the resulting algorithms have exponential complexity. In this paper we propose similarity measures that attempt to capture the "spirit" of dynamic time warping while being defined over continuous domains, and present efficient algorithms for computing them. Our formulation leads to a very interesting connection with finding short paths in a combinatorial manifold defined on the input chains, and in a deeper sense relates to the way light travels in a medium of variable refractivity.
机译:曲线匹配的问题出现在许多应用领域,例如时间序列分析,形状匹配,语音识别和签名验证等。曲线匹配已通过计算几何学进行了广泛的研究,并且已经研究了许多相似性度量,其中包括Frechet距离(有时在民间传说中称为“狗人”距离)。动态时间扭曲量度(DTW)是一种与Frechet距离密切相关但从未在几何环境中进行研究的量度,它最早用于语音识别的环境中。这种度量在不同的领域中普遍存在,这是一个令人惊讶的事实,因为相似性的概念通常会根据应用程序而有很大不同。但是,此度量有一些缺点,最重要的是,它是在点序列之间而不是曲线之间定义的。因此,采样曲线以产生这样的序列的方式会极大地影响结果的质量。已经进行了一些尝试,将DTW推广到连续域,但是所得算法具有指数复杂性。在本文中,我们提出了相似性度量,这些度量试图捕获动态时间规整的“精神”,同时在连续域上进行定义,并提出用于计算它们的有效算法。我们的公式化导致在输入链上定义的组合流形中找到短路径时引起了非常有趣的联系,并且从更深的意义上讲,它涉及光在可变折射率介质中的传播方式。

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