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A dataset of histograms of original and fake voice recordings (H-Voice)

Dora M. Ballesteros, Yohanna Patricia Rodriguez, Diego Renza

2020Data in Brief21 citationsDOIOpen Access PDF

Abstract

This paper presents H-Voice, a dataset of 6672 histograms of original and fake voice recordings obtained by the Imitation [1,2] and the Deep Voice [3] methods. The dataset is organized into six directories: Training_fake, Training_original, Validation_fake, Validation_original, External_test1, and External_test2. The training directories include 2088 histograms of fake voice recordings and 2020 histograms of original voice recordings. Each validation directory has 864 histograms obtained from fake voice recordings and original voice recordings. Finally, External_test1 has 760 histograms (380 from fake voice recordings obtained by the Imitation method and 380 from original voice recordings), and External_test2 has 76 histograms (72 from fake voice recordings obtained by the Deep Voice method and 4 from original voice recordings). With this dataset, the researchers can train, cross-validate and test classification models using machine learning techniques to identify fake voice recordings.

Topics & Concepts

HistogramSpeech recognitionComputer scienceImitationDirectoryArtificial intelligencePsychologySocial psychologyOperating systemImage (mathematics)Music and Audio ProcessingSpeech Recognition and SynthesisDigital Media Forensic Detection
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