Book Chapter10.1007/978-3-319-77583-8_10
Generating Drum Rhythms Through Data-Driven Conceptual Blending of Features and Genetic Algorithms
Maximos A. Kaliakatsos-Papakostas
- 04 Apr 2018
- pp 145-160
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TL;DR: A novel approach to conceptual blending through the combination of higher-level features extracted from data is proposed, the field of application is drum rhythms, and preliminary results shed some light on how feature blending works on the generation of drum rhythms.
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Abstract: Conceptual blending allows the emergence of new conceptual spaces by blending two input spaces. Using conceptual blending for inventing new concepts has been proven a promising technique for computational creativity. Especially in music, recent work has shown that proper representations of the input spaces allows the generation of consistent and sometimes surprising blends. The paper at hand proposes a novel approach to conceptual blending through the combination of higher-level features extracted from data; the field of application is drum rhythms. Through this methodology, the input rhythms are represented by 32 extracted features. After their generic space of similar features is computed, a simple amalgam-based methodology creates a blended set of an as equally as possible divided number of the most salient features from each input. This blended set of features acts as the target vector for a Genetic Algorithm that outputs the rhythm that best captures the blended features; this rhythm is called the blended rhythm. The salience of each feature in each rhythm in the database of input rhythms is computed from data and reflects the uniqueness of features. Preliminary results shed some light on how feature blending works on the generation of drum rhythms and new possible research directions for data-driven feature blending are proposed.
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Citations
Conditional neural sequence learners for generating drums’ rhythms
TL;DR: Results on drums�’ rhythm sequences are presented indicating that the CNSL architecture is effective in producing drums’ sequences that resemble a learnt style, while at the same time conform to given constraints.
19
Conceptual blending of high-level features and data-driven salience computation in melodic generation
TL;DR: A novel approach to generating new material that allows blending high-level features by combining low-level structures, based on statistically computed salience values for each high- level feature extracted from data is proposed.
6
•Proceedings Article
Multidimensional Similarity Modelling of Complex Drum Loops Using the GrooveToolbox
Fred Bruford,Olivier Lartillot,SKoT McDonald,Mark Sandler +3 more
- 11 Oct 2020
TL;DR: The GrooveToolbox as discussed by the authors is a Python library implementing numerous algorithms, both novel and pre-existing, for the analysis of symbolic drum loops, including rhythm features, similarity metrics and microtiming features.
1
Text Conditioned Symbolic Drumbeat Generation using Latent Diffusion Models
Pushkar Jajoria,John B. McDermott +1 more
- 05 Aug 2024
TL;DR: This study introduces a text-conditioned drumbeat generation approach using Latent Diffusion Models, pretraining a multimodal network with contrastive learning, and proposes a novel LSTM variant, MultiResolutionLSTM, to generate novel and apt drumbeats from text prompts.
References
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