Treffer: DeepBindi: An End-to-End Fear Detection System Optimized for Extreme-Edge Deployment.

Title:
DeepBindi: An End-to-End Fear Detection System Optimized for Extreme-Edge Deployment.
Source:
IEEE journal of biomedical and health informatics [IEEE J Biomed Health Inform] 2026 Jan; Vol. 30 (1), pp. 688-699.
Publication Type:
Journal Article
Language:
English
Journal Info:
Publisher: Institute of Electrical and Electronics Engineers Country of Publication: United States NLM ID: 101604520 Publication Model: Print Cited Medium: Internet ISSN: 2168-2208 (Electronic) Linking ISSN: 21682194 NLM ISO Abbreviation: IEEE J Biomed Health Inform Subsets: MEDLINE
Imprint Name(s):
Original Publication: New York, NY : Institute of Electrical and Electronics Engineers, 2013-
Entry Date(s):
Date Created: 20250710 Date Completed: 20260108 Latest Revision: 20260109
Update Code:
20260109
DOI:
10.1109/JBHI.2025.3587961
PMID:
40638343
Database:
MEDLINE

Weitere Informationen

The growing interest in affective computing has resulted in substantial advancements in emotion recognition through the application of various machine learning and deep learning techniques. Nevertheless, existing methodologies exhibit notable limitations. Specifically, they often fail to address extreme-edge design requirements, making them unfeasible for deployment in wearable systems under real-world conditions. With this aim, this paper introduces a novel end-to-end fear recognition system based on physiological signals designed specifically for deployment in extreme-edge contexts. This solution combines advanced feature engineering techniques with optimized lightweight 1D-CNN model architecture that integrates the advantages of both hand-crafted features and advanced deep-learning convolutional techniques. An experimental validation conducted with the WEMAC dataset provides f1-scores of 80% and accuracy rates of 74%, and reveals significant performance improvements with respect to our previous model proposed: 11.6% and 26.4% in accuracy and F1-score metrics, respectively. Additionally, this research demonstrates the successful integration and validation of the model within an ultra-low-power ARM Cortex™-M4 architecture, which exhibits an average power consumption of 16 mW at 5 V, with each inference requiring 496 ms. These results pave the way to a sustainable implementation of deep learning solutions in extreme-edge devices.