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arxiv: 1807.09840 · v2 · pith:NP5CTRAQnew · submitted 2018-07-25 · 📡 eess.AS · cs.SD

A multi-device dataset for urban acoustic scene classification

classification 📡 eess.AS cs.SD
keywords acoustictaskclassificationdatasetrecordedscenescenesurban
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This paper introduces the acoustic scene classification task of DCASE 2018 Challenge and the TUT Urban Acoustic Scenes 2018 dataset provided for the task, and evaluates the performance of a baseline system in the task. As in previous years of the challenge, the task is defined for classification of short audio samples into one of predefined acoustic scene classes, using a supervised, closed-set classification setup. The newly recorded TUT Urban Acoustic Scenes 2018 dataset consists of ten different acoustic scenes and was recorded in six large European cities, therefore it has a higher acoustic variability than the previous datasets used for this task, and in addition to high-quality binaural recordings, it also includes data recorded with mobile devices. We also present the baseline system consisting of a convolutional neural network and its performance in the subtasks using the recommended cross-validation setup.

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