Sound is a fundamental and rich source of information; playing a key role in many areas from humanities and social sciences through to engineering and mathematics. Sound is more than just data 'signals'. It encapsulates physical, sensorial and emotional, as well as social, cultural and environmental factors. Sound contributes to the transformation of our experiences, environments and beliefs. Sound is all around us and everywhere. Hence, it should come as no surprise that sound is a complex multicomponent entity with a vast assortment of characteristics and applications. Of course, an important question is, what is the best way to store and represent sound digitally to capture these characteristics? What model or method is best for manipulating, extracting and filtering sounds? There are a large number of representations and models, however, one approach that has yet to be used with sound is dual-quaternions. While dual-quaternions have established themselves in many fields of science and computing as an efficient mathematical model for providing an unambiguous, un-cumbersome, computationally effective means of representing multi-component data. Sound is one area that has yet to explore and reap the benefits of dual-quaternions (using sound and audio-related dual-quaternion models). This article aims to explore the exciting potential and possibilities dual-quaternions offer when applied and combined with sound-based models (including but not limited to the applications, tools, machine-learning, statistical and computational sound-related algorithms).
翻译:声音是一种基础和丰富的信息源;在人文社会科学、工程和数学等领域起着关键作用。声音不仅是数据“信号”,它封装了物理、感官、情感以及社会、文化和环境等多种因素。声音对我们的经验、环境和信仰的转变做出了贡献。声音无处不在。因此,最好的数字存储和表示声音的方法是什么?哪种模型或方法最适用于操作、提取和过滤声音?虽然有大量的表示和模型,但尚未用于声音的方法之一是双四元数。虽然双四元数已经在许多科学和计算领域中以一种有效的数学模型来提供多组分数据的明确、无累赘、计算有效的表示方式。在使用与声音相关的双四元数模型时,声音是一个尚未探索并发挥双四元数优势的领域之一。本文旨在探讨当将双四元数应用于声音模型(包括但不限于应用、工具、机器学习、统计和计算声音相关算法)时带来的激动人心的潜力和可能性。