ICSI in MediaEval 2017 Multi-Genre Music Task
نویسندگان
چکیده
We present our approach and result for the MediaEval 2017 AcousticBrainz Content-based music genre recognition task. Experimental results show that the best results come from random forest with partial feature selection.
منابع مشابه
The MediaEval 2017 AcousticBrainz Genre Task: Content-based Music Genre Recognition from Multiple Sources
This paper provides an overview of the AcousticBrainz Genre Task organized as part of theMediaEval 2017 Benchmarking Initiative for Multimedia Evaluation. The task is focused on content-based music genre recognition using genre annotations from multiple sources and large-scale music features data available in the AcousticBrainz database. The goal of our task is to explore how the same music pie...
متن کاملHierarchical Multilabel Classification and Voting for Genre Classification
This paper summarizes our contribution (team DBIS) to the AcousticBrainz Genre Task: Content-based music genre recognition from multiple sources as part of MediaEval 2017. We utilize a hierarchical set of multilabel classifiers to predict genres and subgenres and rely on a voting scheme to predict labels across datasets.
متن کاملSingle and Multi Column Neural Networks for Content-based Music Genre Recognition
This working note reports approaches of team KART to MediaEval2017 AcousticBrainz Genre Task and their results. To solve the problem, we mainly considered the sparsity and noise of data, network design for the multi-label classification, and implementation of successful Deep Neural Network (DNN) models. We propose three steps of preprocessing and depict two different approaches: a single-column...
متن کاملMediaEval 2017 AcousticBrainz Genre Task: Multilayer Perceptron Approach
This report describes the approach developed by the JKU team for the MediaEval 2017 AcousticBrainz Genre Task. After experimenting with various classifiers on the development dataset, our final approach is based on multilayer perceptron classifiers.
متن کاملDNN in the AcousticBrainz Genre Task 2017
This paper presents a method of genre classification using deep neural networks for the AcousticBrainz genre classification task of MediaEval 2017.
متن کامل