| # | Authors | Title | Details | Date | Pdf/Links/Bibtex | Keywords |
|---|---|---|---|---|---|---|
| 14 | Marochko V., Rogala J., Longo L. | Integrated Gradients for Enhanced Interpretation of P3b-ERP Classifiers Trained with EEG-superlets in Traditional and Virtual Environments | Joint Proceedings of the xAI 2025 Late-breaking Work, Demos and Doctoral Consortium co-located with the 3rd World Conference on eXplainable Artificial Intelligence (xAI 2025) | 2025 | @inproceedings{MarochkoLongo2025, title={Integrated Gradients for Enhanced Interpretation of P3b-ERP Classifiers Trained with EEG-superlets in Traditional and Virtual Environments}, author={Marochko, Vladimir and Rogala, Jacek and Longo, Luca}, year={2025}, booktitle = {Joint Proceedings of the xAI 2025 Late-breaking Work, Demos and Doctoral Consortium co-located with the 3rd World Conference on eXplainable Artificial Intelligence (xAI 2025), Istanbul, Turkey, 9-11 July, 2025}, publisher = {CEUR-WS.org}, volume = {4017}, series = {{CEUR} Workshop Proceedings}, editor = {Przemys?aw Biecek, Slawomir Nowaczyk, Gitta Kutyniok, Luca Longo}, pages={49-56}, url={https://ceur-ws.org/Vol-4017/paper_07.pdf} } [Close]
| Event-related potentials • Deep learning • Convolutional neural networks • Explainable Artificial Intelligence •
Integrated Gradients • P3b • Oddball paradigm • time-frequency super-resolution • Superlets. |
| 13 | Criscuolo S., Apicella A., Prevete R., Longo L. | Interpreting the latent space of a Convolutional Variational Autoencoder for semi-automated eye blink artefact detection in EEG signals | Computer Standards & Interfaces | 2025 |
@article{CRISCUOLO2024103897, title = {Interpreting the latent space of a Convolutional Variational Autoencoder for semi-automated eye blink artefact detection in EEG signals}, journal = {Computer Standards & Interfaces}, pages = {103897}, year = {2024}, issn = {0920-5489}, doi = {https://doi.org/10.1016/j.csi.2024.103897}, url = {https://www.sciencedirect.com/science/article/pii/S0920548924000667}, author = {Sabatina Criscuolo and Andrea Apicella and Roberto Prevete and Luca Longo}, keywords = {Electroencephalography, Variational autoencoders, Convolution, Ocular artefacts detection, Latent space interpretation} } [Close]
| Electroencephalography •
Variational autoencoders •
Convolution •
Ocular artefacts • detection •
Latent space interpretation |
| 12 | Criscuolo S., Giugliano S., Apicella, A., Donnarumma F., Amato F. Tedesco A., Longo L. | Exploring the Latent Space of Person-Specific Convolutional Autoencoders for Eye-Blink Artefact Mitigation in EEG Signals | 2024 IEEE 8th Forum on Research and Technologies for Society and Industry Innovation (RTSI) | 2024 | @INPROCEEDINGS{CriscuoloLongo2024, author={Criscuolo, Sabatina and Giugliano, Salvatore and Apicella, Andrea and Donnarumma, Francesco and Amato, Francesco and Tedesco, Annarita and Longo, Luca}, booktitle={2024 IEEE 8th Forum on Research and Technologies for Society and Industry Innovation (RTSI)}, title={Exploring the Latent Space of Person-Specific Convolutional Autoencoders for Eye-Blink Artefact Mitigation in EEG Signals}, year={2024}, volume={}, number={}, pages={414-419}, keywords={Training;Correlation;Convolution;Noise reduction;Pipelines;Inspection;Brain modeling;Electroencephalography;Space exploration;Recording;Electroencephalography;Autoencoders;Eye-blink Artefacts Detection;Latent Space interpretation;Explain-able Artificial Intelligence}, doi={10.1109/RTSI61910.2024.10761377}} @INPROCEEDINGS{10761377, author={Criscuolo, Sabatina and Giugliano, Salvatore and Apicella, Andrea and Donnarumma, Francesco and Amato, Francesco and Tedesco, Annarita and Longo, Luca}, booktitle={2024 IEEE 8th Forum on Research and Technologies for Society and Industry Innovation (RTSI)}, title={Exploring the Latent Space of Person-Specific Convolutional Autoencoders for Eye-Blink Artefact Mitigation in EEG Signals}, year={2024}, volume={}, number={}, pages={414-419}, keywords={Training;Correlation;Convolution;Noise reduction;Pipelines;Inspection;Brain modeling;Electroencephalography;Space exploration;Recording;Electroencephalography;Autoencoders;Eye-blink Artefacts Detection;Latent Space interpretation;Explain-able Artificial Intelligence}, doi={10.1109/RTSI61910.2024.10761377}} [Close]
| Electroencephalography • Autoencoders • Eye-blink Artefacts Detection • Latent Space interpretation • Explainable Artificial Intelligence • Artificial Intelligence • Machine Learning • Deep learning |
| 11 | Marochko V., and Longo L. | Enhancing the analysis of the P300 event-related potential with integrated gradients on a convolutional neural network trained with superlets | Joint Proceedings of the xAI 2024 Late-breaking Work, Demos and Doctoral Consortium co-located with the 2nd World Conference on eXplainable Artificial Intelligence (xAI 2024) | 2024 |
@inproceedings{Marochko2024, title={Enhancing the analysis of the P300 event-related potential with integrated gradients on a convolutional neural network trained with superlets}, author={Marochko, Vladimir, and Longo, Luca}, year={2024}, booktitle = {Joint Proceedings of the xAI 2024 Late-breaking Work, Demos and Doctoral Consortium co-located with the 2nd World Conference on eXplainable Artificial Intelligence (xAI 2024), Valletta, Malta, 17-19 July, 2024}, publisher = {CEUR-WS.org}, url = {https://ceur-ws.org/Vol-3793/paper_19.pdf}, volume = {3793}, series = {{CEUR} Workshop Proceedings}, editor = {Luca Longo, Weiru Liu, Grégoire Montavon}, pages={145-152} } [Close]
| Event-related potentials • Deep learning • Convolutional neural networks • Explainable Artificial Intelligence •
Integrated gradients • P3b • Oddball paradigm • time-frequency super-resolution • Superlets |
| 10 | Chikkankod A.V., Longo L. | A proposal for improving EEG microstate generation via interpretable deep clustering with convolutional autoencoders | Joint Proceedings of the xAI 2024 Late-breaking Work, Demos and Doctoral Consortium co-located with the 2nd World Conference on eXplainable Artificial Intelligence (xAI 2024) | 2024 |
@inproceedings{chikkankod2024proposal, title={A proposal for improving EEG microstate generation via interpretable deep clustering with convolutional autoencoders}, author={Chikkankod, Arjun Vinayak and Longo, Luca}, year={2024}, booktitle = {Joint Proceedings of the xAI 2024 Late-breaking Work, Demos and Doctoral Consortium co-located with the 2nd World Conference on eXplainable Artificial Intelligence (xAI 2024), Valletta, Malta, 17-19 July, 2024}, publisher = {CEUR-WS.org}, url = {https://ceur-ws.org/Vol-3793/paper_4.pdf}, volume = {3793}, series = {{CEUR} Workshop Proceedings}, editor = {Luca Longo, Weiru Liu, Grégoire Montavon}, pages={25-32} } [Close]
| EEG Microstates • Shallow clustering • Deep clustering • Convolutional autoencoders • Resting state • Machine Learning • Deep Learning • Microstate theory |
| 9 | Hryniewska-Guzik W., Longo L., Biecek P. | CNN-Based Explanation Ensembling for Dataset, Representation and Explanations Evaluation | eXplainable Artificial Intelligence, The World Conference (xAI-2024) | 2024 |
@InProceedings{10.1007/978-3-031-63797-1_18, author="Hryniewska-Guzik, Weronika and Longo, Luca and Biecek, Przemys{\l}aw", editor="Longo, Luca and Lapuschkin, Sebastian and Seifert, Christin", title="CNN-Based Explanation Ensembling for Dataset, Representation and Explanations Evaluation", booktitle="Explainable Artificial Intelligence", year="2024", publisher="Springer Nature Switzerland", address="Cham", pages="346--368", isbn="978-3-031-63797-1" } [Close]
| Explainable Artificial Intelligence •
XAI •
Convolutional Neural Network •
model evaluation •
data evaluation •
representation learning •
ensemble •
deep learning •
machine learning |
| 8 | Ahmed T., Longo L. | Latent Space Interpretation and Visualisation for Understanding the Decisions of Convolutional Variational Autoencoders Trained with EEG Topographic Maps | Joint Proceedings of the xAI-2023 Late-breaking Work, Demos and Doctoral Consortium co-located with the 1st World Conference on eXplainable Artificial Intelligence (xAI-2023) | 2023 |
@inproceedings{AhmedLongo2023, author = {Ahmed, Taufique and Longo, Luca}, title = {Latent Space Interpretation and Visualisation for Understanding the Decisions of Convolutional Variational Autoencoders Trained with EEG Topographic Maps}, booktitle = {Joint Proceedings of the xAI-2023 Late-breaking Work, Demos and Doctoral Consortium, co-located with the 1st World Conference on eXplainable Artificial Intelligence (xAI-2023)}, year = {2023}, pages={65--70}, publisher={CEUR Workshop Proceedings} } [Close]
| Electroencephalography • Convolutional variational autoencoders • latent space interpretation • deep learning • spectral topographic maps • Machine Learning |
| 7 | Natsiou A., O’Leary S., Longo L. | An Exploration of the Latent Space of a Convolutional Variational Autoencoder for the Generation of Musical Instrument Tones | eXplainable Artificial Intelligence, The World Conference (xAI-2023) | 2023 |
@InProceedings{10.1007/978-3-031-44070-0_24, author="Natsiou, Anastasia and O'Leary, Se{\'a}n and Longo, Luca", editor="Longo, Luca", title="An Exploration of the Latent Space of a Convolutional Variational Autoencoder for the Generation of Musical Instrument Tones", booktitle="Explainable Artificial Intelligence", year="2023", publisher="Springer Nature Switzerland", address="Cham", pages="470--486", isbn="978-3-031-44070-0" } [Close]
| Explainable Artificial Intelligence • Variational Autoencoders •
Audio Representations •
Audio Synthesis •
Latent Feature Importance •
Deep Learning • Machine Learning |
| 6 | Ahmed T., Longo L. | Interpreting Disentangled Representations of Person-Specific Convolutional Variational Autoencoders of Spatially Preserving EEG Topographic Maps via Clustering and Visual Plausibility | Information | 2023 |
@Article{infoLongo2023, AUTHOR = {Ahmed, Taufique and Longo, Luca}, TITLE = {Interpreting Disentangled Representations of Person-Specific Convolutional Variational Autoencoders of Spatially Preserving EEG Topographic Maps via Clustering and Visual Plausibility}, JOURNAL = {Information}, VOLUME = {14}, YEAR = {2023}, NUMBER = {9}, ARTICLE-NUMBER = {489}, URL = {https://www.mdpi.com/2078-2489/14/9/489}, ISSN = {2078-2489}, DOI = {10.3390/info14090489} } [Close]
| electroencephalography • convolutional variational autoencoder • latent space interpretation • deep learning • spectral topographic maps |
| 5 | Natsiou A., Longo L., O'Leary S. | An investigation of the reconstruction capacity of stacked convolutional autoencoders for log-mel-spectrograms | 16th International Conference on Signal-Image Technology & Internet-Based Systems | 2022 |
@INPROCEEDINGS{Natsiou2022, author={Natsiou, Anastasia and Longo, Luca and O’Leary, Seán}, booktitle={2022 16th International Conference on Signal-Image Technology & Internet-Based Systems (SITIS)}, title={An investigation of the reconstruction capacity of stacked convolutional autoencoders for log-mel-spectrograms}, year={2022}, volume={}, number={}, pages={155-162}, doi={10.1109/SITIS57111.2022.00038} } [Close]
| Log-mel-spectrogram • reconstruction • autoencoders • machine learning |
| 4 | Chikkankod A.V., Longo L. | On the Dimensionality and Utility of Convolutional Autoencoder’s Latent Space Trained with Topology-Preserving Spectral EEG Head-Maps | Machine Learning and Knowledge Extraction | 2022 |
@Article{VinayakLongo2022, AUTHOR = {Chikkankod, Arjun Vinayak and Longo, Luca}, TITLE = {On the Dimensionality and Utility of Convolutional Autoencoder’s Latent Space Trained with Topology-Preserving Spectral EEG Head-Maps}, JOURNAL = {Machine Learning and Knowledge Extraction}, VOLUME = {4}, YEAR = {2022}, NUMBER = {4}, PAGES = {1042--1064}, URL = {https://www.mdpi.com/2504-4990/4/4/53}, ISSN = {2504-4990},, DOI = {10.3390/make4040053} } [Close]
| electroencephalography • latent space analysis • sliding windowing • convolutional autoencoders • automatic feature extraction • dense neural network |
| 3 | Longo L. | Modeling Cognitive Load as a Self-Supervised Brain Rate with Electroencephalography and Deep Learning | Brain Sciences | 2022 |
@Article{LongoBrainsci12101416, AUTHOR = {Longo, Luca}, TITLE = {Modeling Cognitive Load as a Self-Supervised Brain Rate with Electroencephalography and Deep Learning}, JOURNAL = {Brain Sciences}, VOLUME = {12}, YEAR = {2022}, NUMBER = {10}, ARTICLE-NUMBER = {1416}, URL = {https://www.mdpi.com/2076-3425/12/10/1416}, ISSN = {2076-3425}, DOI = {10.3390/brainsci12101416} } [Close]
| cognitive load • deep learning • self-supervision • brain rate • convolutional neural network • recurrent neural network • mental workload • EEG bands • electroencephalography • spectral topology-preserving head-maps |
| 2 | Ahmed T., Longo L. | Examining the Size of the Latent Space of Convolutional Variational Autoencoders Trained With Spectral Topographic Maps of EEG Frequency Bands | IEEE Access | 2022 |
@ARTICLE{AhmedLongo2022, author={Ahmed, Taufique and Longo, Luca}, journal={IEEE Access}, title={Examining the Size of the Latent Space of Convolutional Variational Autoencoders Trained With Spectral Topographic Maps of EEG Frequency Bands}, year={2022}, volume={10}, number={}, pages={107575-107586}, doi={10.1109/ACCESS.2022.3212777} } [Close]
| Electroencephalography •
convolutional variational autoencoder • latent space • deep learning • frequency bands • spectral topographic maps • neural networks |
| 1 | Jindala K., Upadhyaya R., Padhyb P.K., Longo L. | Bi-LSTM-deep CNN for schizophrenia detection using MSST-spectral images of EEG signals | Artificial Intelligence-Based Brain-Computer Interface | 2022 |
@incollection{JINDAL2022145, title = {6 - Bi-LSTM-deep CNN for schizophrenia detection using MSST-spectral images of EEG signals}, editor = {Varun Bajaj and G.R. Sinha}, booktitle = {Artificial Intelligence-Based Brain-Computer Interface}, publisher = {Academic Press}, pages = {145-162}, year = {2022}, isbn = {978-0-323-91197-9}, doi = {https://doi.org/10.1016/B978-0-323-91197-9.00011-4}, url = {https://www.sciencedirect.com/science/article/pii/B9780323911979000114}, author = {Komal Jindal and Rahul Upadhyay and Prabin Kumar Padhy and Luca Longo}, keywords = {Schizophrenia, Electroencephalography, Multisynchrosqueezing transform, Bi-directional long short-term memory, Convolutional neural network, Classification, Deep learning} } [Close]
| bi-directional LSTM • Long-Short Term Memory • Deep Learning • Schizophrenia • Spectral analysis • Convolutional neural network • Electroencephalography |
| # | Authors | Title | Details | Date | Pdf/Links/Bibtex | Keywords |