224 research outputs found
Semisynthetic pyrrolizidine alkaloid antitumor agents
Issued as Final report, Project no. G-33-T06 (continues G-33-T05
Wagner Ring Dataset: A Complex Opera Scenario for Music Processing and Computational Musicology
This paper introduces the Wagner Ring Dataset (WRD), a multi-modal and multi-version resource on the large-scale opera cycle Der Ring des Nibelungen by Richard Wagner. The Ring comprises four music dramas organized into eleven acts and 21 939 measures in total. Concerning sheet music, we processed a publicly available piano reduction (822 pages) of the full score with optical music recognition followed by extensive manual corrections to create a high-quality, machine-readable symbolic score. Concerning audio data, our corpus covers 16 recorded performances of the full Ring (three of which are publicly available thanks to copyright expiry), each lasting about 14–15 hours. To musically synchronize these versions among each other, we manually annotated all measure positions for three performances, which we transferred to the remaining performances via automated synchronization techniques. The dataset further comprises annotations of key and time signatures, scenes, and singing voice regions (libretto). Moreover, we provide note event annotations for all performances derived from the piano score. The WRD thus constitutes a comprehensive resource for developing algorithms for various music information retrieval tasks, complementing existing datasets with a complex opera scenario. For computational musicology, the WRD serves as a structured dataset that allows for studying the composition and performances of the Ring
Learning, Probability and Logic: Toward a Unified Approach for Content-Based Music Information Retrieval
Within the last 15 years, the field of Music Information Retrieval (MIR) has made tremendous progress in the development of algorithms for organizing and analyzing the ever-increasing large and varied amount of music and music-related data available digitally. However, the development of content-based methods to enable or ameliorate multimedia retrieval still remains a central challenge. In this perspective paper, we critically look at the problem of automatic chord estimation from audio recordings as a case study of content-based algorithms, and point out several bottlenecks in current approaches: expressiveness and flexibility are obtained to the expense of robustness and vice versa; available multimodal sources of information are little exploited; modeling multi-faceted and strongly interrelated musical information is limited with current architectures; models are typically restricted to short-term analysis that does not account for the hierarchical temporal structure of musical signals. Dealing with music data requires the ability to tackle both uncertainty and complex relational structure at multiple levels of representation. Traditional approaches have generally treated these two aspects separately, probability and learning being the usual way to represent uncertainty in knowledge, while logical representation being the usual way to represent knowledge and complex relational information. We advocate that the identified hurdles of current approaches could be overcome by recent developments in the area of Statistical Relational Artificial Intelligence (StarAI) that unifies probability, logic and (deep) learning. We show that existing approaches used in MIR find powerful extensions and unifications in StarAI, and we explain why we think it is time to consider the new perspectives offered by this promising research field
The anti-tumor agent of aplopappus heterophyllus
Issued as Terminal progress report, Project no. G-33-C03 (continuation of project no. G-33-C02
Natural antitumor agents from the Senecioneae
Issued as Final report, Project no. G-33-P03 (continuation of G-33-P02
Natural anti-tumor agents from the Senecioneae
Issued as Interim report, Project no. G-33-63
The anti-tumor agent of aplopappus heterophyllus
Issued as Report of research grant expenditures, Project no. G-33-C0
The toxic principle of Aplopappus heterophyllus Blake
Issued as final reportContinued as Project no. B-150
Investigation of non-isoprenoid sesquiterpenes
Issued as final repor
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