Search Results for author: Thorir Mar Ingolfsson

Found 9 papers, 4 papers with code

12 mJ per Class On-Device Online Few-Shot Class-Incremental Learning

1 code implementation12 Mar 2024 Yoga Esa Wibowo, Cristian Cioflan, Thorir Mar Ingolfsson, Michael Hersche, Leo Zhao, Abbas Rahimi, Luca Benini

In this work, we introduce Online Few-Shot Class-Incremental Learning (O-FSCIL), based on a lightweight model consisting of a pretrained and metalearned feature extractor and an expandable explicit memory storing the class prototypes.

Few-Shot Class-Incremental Learning Incremental Learning

SzCORE: A Seizure Community Open-source Research Evaluation framework for the validation of EEG-based automated seizure detection algorithms

3 code implementations20 Feb 2024 Jonathan Dan, Una Pale, Alireza Amirshahi, William Cappelletti, Thorir Mar Ingolfsson, Xiaying Wang, Andrea Cossettini, Adriano Bernini, Luca Benini, Sándor Beniczky, David Atienza, Philippe Ryvlin

Based on existing guidelines and recommendations, the framework introduces a set of recommendations and standards related to datasets, file formats, EEG data input content, seizure annotation input and output, cross-validation strategies, and performance metrics.

EEG Seizure Detection

EpiDeNet: An Energy-Efficient Approach to Seizure Detection for Embedded Systems

no code implementations28 Aug 2023 Thorir Mar Ingolfsson, Upasana Chakraborty, Xiaying Wang, Sandor Beniczky, Pauline Ducouret, Simone Benatti, Philippe Ryvlin, Andrea Cossettini, Luca Benini

The EpiDeNet-SSWCE method demonstrates effective and accurate seizure detection performance on heavily imbalanced datasets, while being suited for implementation on energy-constrained platforms.

EEG Seizure Detection +1

Reducing Neural Architecture Search Spaces with Training-Free Statistics and Computational Graph Clustering

no code implementations29 Apr 2022 Thorir Mar Ingolfsson, Mark Vero, Xiaying Wang, Lorenzo Lamberti, Luca Benini, Matteo Spallanzani

The computational demands of neural architecture search (NAS) algorithms are usually directly proportional to the size of their target search spaces.

Clustering Graph Clustering +1

Energy-Efficient Tree-Based EEG Artifact Detection

no code implementations19 Apr 2022 Thorir Mar Ingolfsson, Andrea Cossettini, Simone Benatti, Luca Benini

In this work we present the implementation of an artifact detection algorithm based on a minimal number of EEG channels on a parallel ultra-low-power (PULP) embedded platform.

Artifact Detection EEG +1

Towards Long-term Non-invasive Monitoring for Epilepsy via Wearable EEG Devices

no code implementations15 Jun 2021 Thorir Mar Ingolfsson, Andrea Cossettini, Xiaying Wang, Enrico Tabanelli, Giuseppe Tagliavini, Philippe Ryvlin, Luca Benini, Simone Benatti

We present the implementation of seizure detection algorithms based on a minimal number of EEG channels on a parallel ultra-low-power embedded platform.

EEG Seizure Detection

ECG-TCN: Wearable Cardiac Arrhythmia Detection with a Temporal Convolutional Network

1 code implementation25 Mar 2021 Thorir Mar Ingolfsson, Xiaying Wang, Michael Hersche, Alessio Burrello, Lukas Cavigelli, Luca Benini

With 9. 91 GMAC/s/W, it is 23. 0 times more energy-efficient and 46. 85 times faster than an implementation on the ARM Cortex M4F (0. 43 GMAC/s/W).

Arrhythmia Detection

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