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Dataset of 2D ECG Features (Binary Images and STFT Spectrograms) for Biometric Identification

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Zenodo2025-10-29 更新2026-05-26 收录
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https://zenodo.org/doi/10.5281/zenodo.17478439
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This dataset provides the complete set of 2D features and preprocessed signals used in the scientific publication titled "ECG in security practice: Biometric identification of individuals based on heart signals". The data is designed to support reproducible research in ECG-based biometrics, deep learning, and signal processing. The dataset is derived from two publicly available sources: ECG-ID Database (PhysioNet) Heartprint Database The raw signals from these sources were subjected to a rigorous preprocessing pipeline, which included: Signal Conditioning: Third-order Butterworth band-pass filtering to remove noise and baseline wander correction using a 16th-order polynomial fit. Segmentation: R-peak detection using the Pan-Tompkins algorithm, followed by R-centered segmentation to extract individual heartbeats. Quality Control: Manual and algorithmic removal of corrupted or noisy beats. From these cleaned and segmented heartbeats, two distinct types of 2D features were generated for training convolutional neural networks (CNNs): Binary Images: Morphology-preserving binary images (512x256 px) that directly represent the time-domain waveform shape. STFT Spectrograms: Time-frequency representations (800x600 px) generated using a Short-Time Fourier Transform with a Hann window. The repository is structured into folders containing the original signals, the segmented beats, and the final 2D feature sets for both the ECG-ID and Heartprint databases. A supplemental folder, Spectrograms_Test, contains spectrograms generated with varying parameters for robustness analysis. A detailed metadata file, description_final_database_of_input_images.xlsx, is also included, providing per-subject statistics, including the number of available recordings and segmented beats, which is essential for replicating the experimental setup.
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Zenodo
创建时间:
2025-10-29
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