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Indexing spatio-temporal trajectories with Chebyshev polynomials

机译:用Chebyshev多项式索引时空轨迹

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In this paper, we attempt to approximate and index a d- dimensional (d ≥ 1) spatio-temporal trajectory with a low order continuous polynomial. There are many possible ways to choose the polynomial, including (continuous)Fourier transforms, splines, non-linear regressino, etc. Some of these possiblities have indeed been studied beofre. We hypothesize that one of the best possibilities is the polynomial that minimizes the maximum deviation from the true value, which is called the minimax polynomial. Minimax approximation is particularly meaningful for indexing because in a branch-and-bound search (i.e., for finding nearest neighbours), the smaller the maximum deviation, the more pruning opportunities there exist. However, in general, among all the polynomials of the same degree, the optimal minimax polynomial is very hard to compute. However, it has been shown thta the Chebyshev approximation is almost identical to the optimal minimax polynomial, and is easy to compute [16]. Thus, in this paper, we explore how to use the Chebyshev polynomials as a basis for approximating and indexing d-dimenstional trajectories.The key analytic result of this paper is the Lower Bounding Lemma. that is, we show that the Euclidean distance between two d-dimensional trajectories is lower bounded by the weighted Euclidean distance between the two vectors of Chebyshev coefficients. this lemma is not trivial to show, and it ensures that indexing with Chebyshev cofficients aedmits no false negatives. To complement that analystic result, we conducted comprehensive experimental evaluation with real and generated 1-dimensional to 4-dimensional data sets. We compared the proposed schem with the Adaptive Piecewise Constant Approximation (APCA) scheme. Our preliminary results indicate that in all situations we tested, Chebyshev indexing dominates APCA in pruning power, I/O and CPU costs.
机译:在本文中,我们尝试用低阶连续多项式近似和索引 d-维( d ≥1)时空轨迹。选择多项式的方法有很多,包括(连续)傅立叶变换,样条曲线,非线性回归等。确实已经对其中的某些可能性进行了研究。我们假设最好的可能性之一是最小化与真实值的最大偏差的多项式,称为 minimax 多项式。 Minimax逼近对于索引编制特别有意义,因为在分支定界搜索(即查找最近的邻居)中,最大偏差越小,存在的修剪机会就越多。然而,通常,在相同程度的所有多项式中,最优极小极大多项式很难计算。然而,已经证明切比雪夫近似与最优最小极大多项式几乎相同,并且易于计算[16]。因此,在本文中,我们探索了如何使用Chebyshev多项式作为对 d-维轨迹进行逼近和索引的基础。本文的关键分析结果是下界引理。也就是说,我们证明了两个 d-维轨迹之间的欧几里得距离受切比雪夫系数两个向量之间的加权欧几里得距离限制。这个引理并非微不足道,而且可以确保用Chebyshev系数编制索引不会出现假阴性。为了补充该分析结果,我们使用真实的和生成的1维到4维数据集进行了全面的实验评估。我们将提出的方案与自适应分段常数逼近(APCA)方案进行了比较。我们的初步结果表明,在所有经过测试的情况下,Chebyshev索引在修剪能力,I / O和CPU成本方面均占APCA的主导地位。

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