论文标题
Quiko:量子节拍生成应用
QuiKo: A Quantum Beat Generation Application
论文作者
论文摘要
在本章中,将讨论称为Quiko的量子音乐生成应用程序。它将现有的量子算法与来自量子机学习的数据编码方法结合在一起,从音轨数据库构建鼓和音频样品模式。 Quiko利用量子计算机的物理特性和特征来生成可以称为Alexis Kirke提出的软规则的物理特性。这些规则利用了量子设备产生的噪音来制定灵活的规则和语法,以生成量子音乐。这些属性包括量子电路中的量子反应和回试应当受控的量子门。 Quiko建立在量子音乐生成中软规则的概念上,并将其进一步发展。它试图模仿和反应外部音乐的投入,类似于人类音乐家彼此演奏和撰写的方式。音频信号用作系统中的输入。然后在信号上进行特征提取,以识别谐波和打击乐元件。然后将此信息编码到量子电路上。然后进行量子电路的测量,以外部音乐应用程序的概率分布形式提供结果,用于构建新的鼓模式。
In this chapter a quantum music generation application called QuiKo will be discussed. It combines existing quantum algorithms with data encoding methods from quantum machine learning to build drum and audio sample patterns from a database of audio tracks. QuiKo leverages the physical properties and characteristics of quantum computers to generate what can be referred to as Soft Rules proposed by Alexis Kirke. These rules take advantage of the noise produced by quantum devices to develop flexible rules and grammars for quantum music generation. These properties include qubit decoherence and phase kickback due controlled quantum gates within the quantum circuit. QuiKo builds upon the concept of soft rules in quantum music generation and takes it a step further. It attempts to mimic and react to an external musical inputs, similar to the way that human musicians play and compose with one another. Audio signals are used as inputs into the system. Feature extraction is then performed on the signal to identify the harmonic and percussive elements. This information is then encoded onto the quantum circuit. Measurements of the quantum circuit are then taken providing results in the form of probability distributions for external music applications to use to build the new drum patterns.