Approximating a Function with a Jump Discontinuity—The High-Noise Case

Qusay Muzaffar, David Levin, Michael Werman
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Abstract

This paper presents a novel deep-learning network designed to detect intervals of jump discontinuities in single-variable piecewise smooth functions from their noisy samples. Enhancing the accuracy of jump discontinuity estimations can be used to find a more precise overall approximation of the function, as traditional approximation methods often produce significant errors near discontinuities. Detecting intervals of discontinuities is relatively straightforward when working with exact function data, as finite differences in the data can serve as indicators of smoothness. However, these smoothness indicators become unreliable when dealing with highly noisy data. In this paper, we propose a deep-learning network to pinpoint the location of a jump discontinuity even in the presence of substantial noise.
用跳跃不连续逼近函数--高噪声情况
本文介绍了一种新型深度学习网络,旨在从噪声样本中检测单变量片断平稳函数中的跳跃不连续区间。提高跳跃不连续性估计的准确性可用于找到函数更精确的整体近似值,因为传统的近似方法往往会在不连续性附近产生显著误差。在处理精确函数数据时,检测不连续区间相对简单,因为数据中的有限差分可以作为平稳性指标。然而,在处理高噪声数据时,这些平稳性指标就变得不可靠了。在本文中,我们提出了一种深度学习网络,即使在存在大量噪声的情况下,也能精确定位跳跃不连续性的位置。
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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