Seminar today
Jan Kofron
jan.kofron at d3s.mff.cuni.cz
Tue Apr 22 07:40:51 CEST 2025
Sorry for the wrong subject! The seminar is today, of course!
Jan
On 22. 04. 25 7:39, Jan Kofron wrote:
> Dear all,
>
> Let me invite you to another seminar in this semester that will take
> place *today* at 14:00 in S510 [1]. The seminar will be held by Adriana
> Jubera.
>
> Please find the details of the talk below.
>
> [1] https://d3s.mff.cuni.cz/seminar/
>
> Thanks, best regards!
> Jan
>
>
> ====
> Title: Enhancing ECG Signal Classification with Recurrent Neural Network
>
> Abstract: This work explores the application of recurrent neural
> networks (RNNs) in the analysis of electrocardiography (ECG) data, with
> a focus on detecting abnormal cardiac patterns. Using the MIT-BIH
> Arrhythmia Database, two Long Short-Term Memory (LSTM) models are
> developed to classify ECG signals and identify anomalies. The first
> model is a basic LSTM, while the second incorporates an advanced
> architecture combining convolutional layers and an attention mechanism,
> enhancing the model’s ability to capture both spatial and temporal
> patterns. We compare the performance of these models in terms of
> accuracy, loss, and training time, and demonstrate that the enhanced
> model with attention and convolution outperforms the basic LSTM,
> achieving 96.82% accuracy compared to 95.42% for the basic model.
> Despite the additional computational cost, the improved model provides
> better generalization, making it a suitable choice for real-world
> applications in cardiac anomaly detection. This study highlights the
> potential of LSTMs in healthcare, particularly in automated ECG analysis
> for disease prediction.
>
>
>
--
Jan Kofron, Ph.D.
Associate Professor
Department of Distributed and Dependable Systems
Faculty of Mathematics and Physics
Charles University
Malostranske namesti 25
118 00 Praha 1, Czech Republic
Phone: +420 95155 4285
http://d3s.mff.cuni.cz/~kofron
-------------- next part --------------
A non-text attachment was scrubbed...
Name: OpenPGP_signature.asc
Type: application/pgp-signature
Size: 236 bytes
Desc: OpenPGP digital signature
URL: <http://d3s.mff.cuni.cz/pipermail/seminar/attachments/20250422/9f536ea6/attachment.sig>
More information about the Seminar
mailing list