We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Spectrogram Dataset of Korean Smartphone Audio Files Forged Using the "Mix Paste" Command.
- Authors
Son, Yeongmin; Kwak, Won Jun; Park, Jae Wan
- Abstract
This study focuses on the field of voice forgery detection, which is increasing in importance owing to the introduction of advanced voice editing technologies and the proliferation of smartphones. This study introduces a unique dataset that was built specifically to identify forgeries created using the "Mix Paste" technique. This editing technique can overlay audio segments from similar or different environments without creating a new timeframe, making it nearly infeasible to detect forgeries using traditional methods. The dataset consists of 4665 and 45,672 spectrogram images from 1555 original audio files and 15,224 forged audio files, respectively. The original audio was recorded using iPhone and Samsung Galaxy smartphones to ensure a realistic sampling environment. The forged files were created from these recordings and subsequently converted into spectrograms. The dataset also provided the metadata of the original voice files, offering additional context and information that could be used for analysis and detection. This dataset not only fills a gap in existing research but also provides valuable support for developing more efficient deep learning models for voice forgery detection. By addressing the "Mix Paste" technique, the dataset caters to a critical need in voice authentication and forensics, potentially contributing to enhancing security in society. Dataset: https://drive.google.com/drive/folders/10cBCvQTF-XqCfdQuUU4y%5fssrbi3hUJkw (accessed on 19 November 2023). Dataset License: CC BY-NC-ND
- Subjects
SPECTROGRAMS; DEEP learning; SMARTPHONES; EVIDENCE gaps; FORGERY; BASIC needs
- Publication
Data (2306-5729), 2023, Vol 8, Issue 12, p183
- ISSN
2306-5729
- Publication type
Article
- DOI
10.3390/data8120183