Human-informed robotic percussion renderings: acquisition, analysis, and rendering of percussion performances using stochastic models and robotics
A percussion performance by a skilled musician will often extend beyond a written score in terms of expressiveness. This assertion is clearly evident when comparing a human performance with one that has been rendered by some form of automaton that expressly follows a transcription. Although music no...
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ndltd-uvic.ca-oai-dspace.library.uvic.ca-1828-104332018-12-20T17:35:51Z Human-informed robotic percussion renderings: acquisition, analysis, and rendering of percussion performances using stochastic models and robotics Van Rooyen, Robert Martinez Tzanetakis, George Schloss, W. Andrew Mechatronic Drummer Stochastic Model Gesture Acquisition Motion Capture Voice Coil Actuator Motion Dataset Expressive Performance Percussion Robotics Cyber-physical Systems Performer-specific Analysis A percussion performance by a skilled musician will often extend beyond a written score in terms of expressiveness. This assertion is clearly evident when comparing a human performance with one that has been rendered by some form of automaton that expressly follows a transcription. Although music notation enforces a significant set of constraints, it is the responsibility of the performer to interpret the piece and “bring it to life” in the context of the composition, style, and perhaps with a historical perspective. In this sense, the sheet music serves as a general guideline upon which to build a credible performance that can carry with it a myriad of subtle nuances. Variations in such attributes as timing, dynamics, and timbre all contribute to the quality of the performance that will make it unique within a population of musicians. The ultimate goal of this research is to gain a greater understanding of these subtle nuances, while simultaneously developing a set of stochastic motion models that can similarly approximate minute variations in multiple dimensions on a purpose-built robot. Live or recorded motion data, and algorithmic models will drive an articulated robust multi-axis mechatronic system that can render a unique and audibly pleasing performance that is comparable to its human counterpart using the same percussion instruments. By utilizing a non-invasive and flexible design, the robot can use any type of drum along with different types of striking implements to achieve an acoustic richness that would be hard if not impossible to capture by sampling or sound synthesis. The flow of this thesis will follow the course of this research by introducing high-level topics and providing an overview of related work. Next, a systematic method for gesture acquisition of a set of well-defined percussion scores will be introduced, followed by an analysis that will be used to derive a set of requirements for motion control and its associated electromechanical subsystems. A detailed multidiscipline engineering effort will be described that culminates in a robotic platform design within which the stochastic motion models can be utilized. An analysis will be performed to evaluate the characteristics of the robotic renderings when compared to human reference performances. Finally, this thesis will conclude by highlighting a set of contributions as well as topics that can be pursued in the future to advance percussion robotics. Graduate 2019-12-10 2018-12-19T22:50:05Z 2018 2018-12-19 Thesis https://dspace.library.uvic.ca//handle/1828/10433 English en Available to the World Wide Web application/pdf |
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English en |
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Others
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Mechatronic Drummer Stochastic Model Gesture Acquisition Motion Capture Voice Coil Actuator Motion Dataset Expressive Performance Percussion Robotics Cyber-physical Systems Performer-specific Analysis |
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Mechatronic Drummer Stochastic Model Gesture Acquisition Motion Capture Voice Coil Actuator Motion Dataset Expressive Performance Percussion Robotics Cyber-physical Systems Performer-specific Analysis Van Rooyen, Robert Martinez Human-informed robotic percussion renderings: acquisition, analysis, and rendering of percussion performances using stochastic models and robotics |
description |
A percussion performance by a skilled musician will often extend beyond a written score in terms of expressiveness. This assertion is clearly evident when comparing a human performance with one that has been rendered by some form of automaton that expressly follows a transcription. Although music notation enforces a significant set of constraints, it is the responsibility of the performer to interpret the piece and “bring it to life” in the context of the composition, style, and perhaps with a historical perspective. In this sense, the sheet music serves as a general guideline upon which to build a credible performance that can carry with it a myriad of subtle nuances. Variations in such attributes as timing, dynamics, and timbre all contribute to the quality of the performance that will make it unique within a population of musicians. The ultimate goal of this research is to gain a greater understanding of these subtle nuances, while simultaneously developing a set of stochastic motion models that can similarly approximate minute variations in multiple dimensions on a purpose-built robot. Live or recorded motion data, and algorithmic models will drive an articulated robust multi-axis mechatronic system that can render a unique and audibly pleasing performance that is comparable to its human counterpart using the same percussion instruments. By utilizing a non-invasive and flexible design, the robot can use any type of drum along with different types of striking implements to achieve an acoustic richness that would be hard if not impossible to capture by sampling or sound synthesis. The flow of this thesis will follow the course of this research by introducing high-level topics and providing an overview of related work. Next, a systematic method for gesture acquisition of a set of well-defined percussion scores will be introduced, followed by an analysis that will be used to derive a set of requirements for motion control and its associated electromechanical subsystems. A detailed multidiscipline engineering effort will be described that culminates in a robotic platform design within which the stochastic motion models can be utilized. An analysis will be performed to evaluate the characteristics of the robotic renderings when compared to human reference performances. Finally, this thesis will conclude by highlighting a set of contributions as well as topics that can be pursued in the future to advance percussion robotics. === Graduate === 2019-12-10 |
author2 |
Tzanetakis, George |
author_facet |
Tzanetakis, George Van Rooyen, Robert Martinez |
author |
Van Rooyen, Robert Martinez |
author_sort |
Van Rooyen, Robert Martinez |
title |
Human-informed robotic percussion renderings: acquisition, analysis, and rendering of percussion performances using stochastic models and robotics |
title_short |
Human-informed robotic percussion renderings: acquisition, analysis, and rendering of percussion performances using stochastic models and robotics |
title_full |
Human-informed robotic percussion renderings: acquisition, analysis, and rendering of percussion performances using stochastic models and robotics |
title_fullStr |
Human-informed robotic percussion renderings: acquisition, analysis, and rendering of percussion performances using stochastic models and robotics |
title_full_unstemmed |
Human-informed robotic percussion renderings: acquisition, analysis, and rendering of percussion performances using stochastic models and robotics |
title_sort |
human-informed robotic percussion renderings: acquisition, analysis, and rendering of percussion performances using stochastic models and robotics |
publishDate |
2018 |
url |
https://dspace.library.uvic.ca//handle/1828/10433 |
work_keys_str_mv |
AT vanrooyenrobertmartinez humaninformedroboticpercussionrenderingsacquisitionanalysisandrenderingofpercussionperformancesusingstochasticmodelsandrobotics |
_version_ |
1718804495459155968 |