In musicology and music research generally, the increasing availability of digital music, storage capacities, and computing power enable and require new and intelligent systems. In the transition from traditional to digital musicology, many techniques and tools have been developed for the analysis of individual pieces of music, but large-scale music data that are increasingly becoming available require research methods and systems that work on the collection-level and at scale. Although many relevant algorithms have been developed during the past 15 years of research in Music Information Retrieval, an integrated system that supports large-scale digital musicology research has so far been lacking. In the Digital Music Lab (DML) project, a collaboration among music librarians, musicologists, computer scientists, and human-computer interface specialists, the DML software system has been developed that fills this gap by providing intelligent large-scale music analysis with a user-friendly interactive interface supporting musicologists in their exploration and enquiry. The DML system empowers musicologists by addressing several challenges: distributed processing of audio and other music data, management of the data analysis process and results, remote analysis of data under copyright, logical inference on the extracted information and metadata, and visual web-based interfaces for exploring and querying the music collections. The DML system is scalable and based on SemanticWeb technology and integrates into Linked Data with the vision of a distributed system that enables music research across archives, libraries, and other providers of music data. A first DML system prototype has been set up in collaboration with the British Library and I Like Music Ltd. This system has been used to analyse a diverse corpus of currently 250,000 music tracks. In this article, we describe the DML system requirements, design, architecture, components, and available data sources, explaining their interaction. We report use cases and applications with initial evaluations of the proposed system.
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机译:通常,在音乐学和音乐研究中,数字音乐的可用性,存储容量和计算能力的不断提高使得并需要新的智能系统。在从传统音乐学到数字音乐学的过渡中,已经开发了许多技术和工具来分析单个音乐,但是越来越多的大规模音乐数据需要在馆藏级和研究级工作的研究方法和系统。规模。尽管在过去15年的音乐信息检索研究中已经开发了许多相关的算法,但是到目前为止,仍缺乏支持大规模数字音乐学研究的集成系统。在数字音乐实验室(DML)项目中,音乐图书馆员,音乐学家,计算机科学家和人机界面专家之间的合作,开发了DML软件系统,该系统通过为用户提供智能的大规模音乐分析来填补这一空白。友好的交互界面,支持音乐学家进行探索和查询。 DML系统通过解决以下难题为音乐学家提供了支持:音频和其他音乐数据的分布式处理,数据分析过程和结果的管理,版权下数据的远程分析,对提取的信息和元数据的逻辑推断以及基于Web的可视界面用于探索和查询音乐收藏。 DML系统是可扩展的,基于SemanticWeb技术,并以分布式系统的愿景集成到Linked Data中,该分布式系统可实现跨档案,图书馆和其他音乐数据提供商的音乐研究。已与大英图书馆和I Like Music Ltd.合作建立了第一个DML系统原型。该系统已用于分析当前250,000个音乐曲目的各种语料库。在本文中,我们描述了DML系统要求,设计,体系结构,组件和可用数据源,并解释了它们之间的交互。我们报告用例和应用程序,并对提议的系统进行初步评估。
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