IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

A Lightweight Deep Learning Network for Emotion Recognition Applications on Portable Devices

A Lightweight Deep Learning Network for Emotion Recognition Applications on Portable Devices
View Sample PDF
Author(s): Duong Thi Mai Thuong (Thai Nguyen University of Information and Communication Technology, Thai Nguyen, Vietnam), Nguyen Phuong Huy (Thai Nguyen University of Technology, Thai Nguyen, Vietnam), Trung-Nghia Phung (Thai Nguyen University of Information and Communication Technology, Thai Nguyen, Vietnam)and Dang Ngoc Cuong (Duy Tan University, Da Nang, Vietnam)
Copyright: 2025
Volume: 16
Issue: 1
Pages: 23
Source title: International Journal of Knowledge and Systems Science (IJKSS)
Editor(s)-in-Chief: Van Nam Huynh (JAIST, Japan)
DOI: 10.4018/IJKSS.373712

Purchase

View A Lightweight Deep Learning Network for Emotion Recognition Applications on Portable Devices on the publisher's website for pricing and purchasing information.

Abstract

The search for efficient deep learning architectures for emotion recognition using EEG signals has drawn great interest due to applications in healthcare, education, and intelligent interaction. These models must meet three key requirements: achieving high accuracy with fewer electrodes (32, 14, or even 5), maintaining stable performance across frequency bands, and being lightweight enough for deployment on low-resource devices. This paper proposes EEG_SICNET, an enhanced 1D-CNN integrated with Squeeze and Excitation and Inception blocks to optimize EEG signal processing. Experiments on DEAP, DREAMER, and AMIGOS datasets demonstrate EEG_SICNET's compact size (40.14 MB), stable performance across frequency bands, and accuracy up to 83% with 5 electrodes. Additionally, it achieves over 72% accuracy when deployed on a Raspberry Pi 4 with 14-channel input, outperforming recent methods on the DEAP dataset.

Related Content

Duong Thi Mai Thuong, Nguyen Phuong Huy, Trung-Nghia Phung, Dang Ngoc Cuong. © 2025. 23 pages.
Phan Hong Hai, Bui Thanh Khoa. © 2025. 14 pages.
Ly Thi Khanh Le, Tuan Huy Nguyen, Minh Cong Nguyen, Huong Thi Thu Luu, Dung Thanh Dang. © 2025. 23 pages.
. © 2025.
Piyanee Akkawuttiwanich, Pisal Yenradee, Narudh Cheramakara. © 2024. 26 pages.
Waranyoo Thippo, Chorkaew Jaturanonda, Sorawit Yaovasuwanchai, Charoenchai Khompatraporn, Teeradej Wuttipornpun, Kulwara Meksawan. © 2024. 28 pages.
Kanokwan Singha, Parthana Parthanadee, Ajchara Kessuvan, Jirachai Buddhakulsomsiri. © 2024. 14 pages.
Body Bottom