This thesis deals with systems for tempo and beat detection in music recordings, whosefunctionality is based on neural networks. The basic structure of such systems is briefly described andthe emphasis is then placed on a comparison of recurrent and temporal convolutional networks, whichhave proven to be the most suitable for this task. The main outcome of this work is then proposaland comparison of modified temporal convolutional network with other state-of-the-art networks ina beat tracking system. The results suggest that simplification in existing architectures could benefitfrom faster training times, while it maintains or slightly improves the accuracy of a detection system
In this paper we present a new beat tracking algorithm which extends an existing state-of-the-art sy...
In this paper, we propose a multi-task learning approach for simultaneous tempo estimation and beat ...
In this paper we present a new beat tracking algorithm which extends an existing state-of-the-art sy...
This thesis deals with systems for tempo and beat detection in music recordings, whosefunctionality ...
This Master’s thesis deals with beat tracking systems, whose functionality is based on neural networ...
This master thesis deals with systems for detecting rhythmic structures of music recordings. The fie...
This work deals with systems for detecting rhythmic structures of music recordings. Thefield of retr...
Beat tracking systems capture time positions of beats within digital recordings. Theyare used, for e...
We present a single-step musical tempo estimation system based solely on a convolutional neural netw...
We present a novel rhythm tracking architecture that learns how to track tempo and beats through lay...
Nowadays, there are many computer music algorithms applied to a wide number of applications in the m...
Most people follow the music to hum or follow the rhythm to tap sometimes. We may get differ-ent mea...
In this paper a novel approach that adopts Convolutional Neural Networks (CNN) for the Beat Tracking...
The human ability to track musical downbeats is robust to changes in tempo, and it extends to tempi ...
This work is a study into the e˙ectiveness of autoencoders applied to beat tracking. We propose an a...
In this paper we present a new beat tracking algorithm which extends an existing state-of-the-art sy...
In this paper, we propose a multi-task learning approach for simultaneous tempo estimation and beat ...
In this paper we present a new beat tracking algorithm which extends an existing state-of-the-art sy...
This thesis deals with systems for tempo and beat detection in music recordings, whosefunctionality ...
This Master’s thesis deals with beat tracking systems, whose functionality is based on neural networ...
This master thesis deals with systems for detecting rhythmic structures of music recordings. The fie...
This work deals with systems for detecting rhythmic structures of music recordings. Thefield of retr...
Beat tracking systems capture time positions of beats within digital recordings. Theyare used, for e...
We present a single-step musical tempo estimation system based solely on a convolutional neural netw...
We present a novel rhythm tracking architecture that learns how to track tempo and beats through lay...
Nowadays, there are many computer music algorithms applied to a wide number of applications in the m...
Most people follow the music to hum or follow the rhythm to tap sometimes. We may get differ-ent mea...
In this paper a novel approach that adopts Convolutional Neural Networks (CNN) for the Beat Tracking...
The human ability to track musical downbeats is robust to changes in tempo, and it extends to tempi ...
This work is a study into the e˙ectiveness of autoencoders applied to beat tracking. We propose an a...
In this paper we present a new beat tracking algorithm which extends an existing state-of-the-art sy...
In this paper, we propose a multi-task learning approach for simultaneous tempo estimation and beat ...
In this paper we present a new beat tracking algorithm which extends an existing state-of-the-art sy...