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Heartbeat sound classification system using deep learning techniques

A user-friendly website built with Streamlit classifies heartbeat audio into five categories using CNN/RNN algorithms in Python. Deployed on a Raspberry Pi 4, it offers a cost-effective solution for heartbeat analysis. This project harnesses machine learning to provide insightful health monitoring and support accurate cardiovascular diagnostics.

Snapshots


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Home Page

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Select Audio File

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Waveform of Audio File

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Spectrogram of Audio File

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Predicted Category

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Description

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Features


  • The project uses CNN/RNN algorithms to classify heartbeat audio into five categories, providing accurate and insightful analysis for cardiovascular health monitoring.
  • A user-friendly website built with Streamlit offers an intuitive platform for uploading and analyzing heartbeat audio, deployed on a Raspberry Pi 4 for a cost-effective and portable solution.

Tech Stack

-Python

Requirements

  • Pycharm
  • Streamlit

🤝 Contributing

Contributions, issues, and feature requests are welcome!