A neural network based dynamic reconstruction filter for digital audio signals

H. Najafi, Donald W. Moses, Charles H. Hustig, James Kinne
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引用次数: 1

Abstract

The goal of any digital audio system is to sample and reconstruct an analog audio signal, without noticeable changes to the original signal. Currently, two major types of reconstruction filters, brickwall and monotonic filters, are used to smooth a sampled analog audio signal during its reconstruction. Brickwall filters work best on reconstruction of smooth signals and the monotonic filters are best for reconstruction of transient signals. Since audio is composed of mixed transient and smooth signals, both of these filters will introduce undesirable artifacts to the signal during its reconstruction. The paper presents a new neural network based dynamic reconstruction filter that can change its behavior to best match the type of signal that is being filtered.
基于神经网络的数字音频信号动态重构滤波器
任何数字音频系统的目标都是采样和重建模拟音频信号,而不会对原始信号产生明显的变化。目前,两种主要类型的重构滤波器,砖墙和单调滤波器,用于平滑采样模拟音频信号在其重构过程中。砖墙滤波器对平滑信号的重构效果最好,单调滤波器对瞬态信号的重构效果最好。由于音频是由混合瞬态信号和平滑信号组成的,这两种滤波器都会在信号重建过程中引入不希望的伪影。本文提出了一种新的基于神经网络的动态重构滤波器,它可以改变自己的行为以最好地匹配被滤波的信号类型。
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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