Comparison of window shapes and lengths in short-time feature extraction for classification of heart sound signals
Mahmoud Fakhry, Abeer FathAllah Brery

TL;DR
This study evaluates how different window shapes and lengths affect feature extraction from PCG signals for heart sound classification, finding Gaussian windows optimal for performance.
Contribution
It provides an experimental comparison of window shapes and lengths, identifying the Gaussian window as most effective for heart sound signal classification.
Findings
Gaussian window yields best classification performance.
75 ms Gaussian window outperforms baseline methods.
Rectangular window performs worst among tested options.
Abstract
Heart sound signals, phonocardiography (PCG) signals, allow for the automatic diagnosis of potential cardiovascular pathology. Such classification task can be tackled using the bidirectional long short-term memory (biLSTM) network, trained on features extracted from labeled PCG signals. Regarding the non-stationarity of PCG signals, it is recommended to extract the features from multiple short-length segments of the signals using a sliding window of certain shape and length. However, some window contains unfavorable spectral side lobes, which distort the features. Accordingly, it is preferable to adapt the window shape and length in terms of classification performance. We propose an experimental evaluation for three window shapes, each with three window lengths. The biLSTM network is trained and tested on statistical features extracted, and the performance is reported in terms of the…
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