New Breakthrough in Emotional "Mind Reading"---Photonic Vibration Perception System Achieves Stable Cross-Individual Recognition
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New Breakthrough in Emotional "Mind Reading"---Photonic Vibration Perception System Achieves Stable Cross-Individual Recognition

05/02/2026 Compuscript Ltd

A new publication from Opto-Electronic Technology; DOI 10.29026/oet.2025.250010, discusses how a photonic vibration perception system achieves stable cross-individual recognition.

Emotions are a fundamental component of human cognition, decision-making, and social behavior, and they play an important role in applications such as mental health assessment, human–computer interaction, wearable devices, and intelligent healthcare. In recent years, emotion recognition based on physiological signals has attracted growing attention. Among these signals, cardiac activity is considered a particularly promising objective indicator, as it is closely associated with emotional arousal. However, a major challenge remains in practical applications: substantial inter-subject variability in physiological characteristics, signal patterns, and emotional responses. This variability often leads to a marked decline in performance when emotion recognition models are applied across subjects, significantly hindering their translation from laboratory studies to real-world use.

Meanwhile, conventional cardiac signal acquisition methods still face limitations in wearing comfort, resistance to motion artifacts, and long-term stability, making them less suitable for daily-life scenarios. With advances in photonic sensing and intelligent signal processing, novel sensing modalities and feature representations have emerged as promising solutions to these challenges. Consequently, developing emotion recognition approaches that ensure reliable signal acquisition while extracting emotion-related information that is robust to individual differences has become a key scientific issue in the field.

This study introduces a novel cardiac activity–based framework PCERS(Fig .1) for cross-subject emotion recognition, offering several important advances for affective computing and physiological signal analysis. First, a photonic sensing system is developed to capture seismocardiography signals in a non-invasive and highly sensitive manner. The system demonstrates fast response, long-term stability, and strong robustness to motion, providing a reliable foundation for emotion-related cardiac monitoring in practical scenarios. Second, a sample entropy–based signal processing strategy is employed to characterize the intrinsic complexity of cardiac signals. This approach effectively suppresses motion-induced interference while preserving emotion-relevant dynamics, resulting in more accurate and robust cardiac activity assessment under both static and dynamic conditions.


Most importantly, the study introduces a complex network–based representation of cardiac signals for emotion recognition. Network topological features derived from these signals exhibit clear differences between emotional states while remaining highly consistent across individuals. This subject-invariant property directly addresses a longstanding challenge in cross-subject emotion recognition. As a result, the proposed system achieves strong performance under subject-independent evaluation, (Fig .2) substantially reducing the performance gap between subject-dependent and cross-subject emotion recognition. These findings highlight the potential of the proposed framework to support practical, real-world emotion recognition applications.

This work was supported by the National Key Research and Development Program of China (Grant No. 2022YFE0140400), the National Natural Science Foundation of China (Grant Nos. 62405027, 62111530238, 62003046), the Major Scientific Research Project Incubation Fund of Beijing Normal University at Zhuhai (Grant No. ZHPT2023007), the Guangdong Special Support Program for Young Top-notch Talent (Grant No. 2024TQ08A610), and the Tang Chung Ying Foundation “Tang Scholar” award.

Keywords: photonic sensing, emotion recognition, machine learning, subject-invariant

Long YK, Min R, Xiao K, et al. Decoding subject-invariant emotional information from cardiac signals detected by photonic sensing system. Opto-Electron Technol 1, 250010 (2025). DOI: 10.29026/oet.2025.250010
Archivos adjuntos
  • Figure 1 An overview of PCERS. a. Core principle of PCERS. Physiological changes are subsequently interpreted by the central nervous system, generating emotions and feelings. b. An overview of the PVSD. c. The signal processing and classification pipeline of PCERS. d. The key advantage of PCERS lies in its capability to mitigate subject variability, which is reflected on the similar accuracy between subject-dependent and subject-independent cross-validation methods.
  • Figure 2 The results of emotion recognition experiments. a-d. The training-testing set splitting method, confusion matrix, macro-averaged ROC curve, and average F1 score for the 8-fold a, LOO b, 4-fold c, and LTO d cross-validation methods. The accuracy difference between the 8-fold and LOO cross-validation was 1.04%, while the difference between the 4-fold and LTO cross-validation was 2.75%. AUC of these four cross-validation methods are 0.93, 0.93, 0.93 and 0.92, respectively. The maximum F1 score difference for the same emotion were 0.07 in both comparative groups. e. The average accuracy of each subject under each cross-validation method.
05/02/2026 Compuscript Ltd
Regions: Europe, Ireland, Asia, China, North America, United States
Keywords: Applied science, Technology

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