Improving facial expression recognition through PCA and LBP with SVM classifier

  • Duong Thanh Linh
  • Le Trung Hau
  • Nguyen Hoang Khoi
Từ khóa: Facial Expression Recognition; Principal Component Analysis; Local Binary Patterns; Support Vector Machine; Euclidean Distance.

Tóm tắt

This paper proposes a facial expression recognition method using a combination of Principal Component Analysis (PCA) and Local Binary Pattern (LBP) algorithms for feature extraction from facial images. Experiments were conducted on two datasets: the Japanese Female Facial Expression (JAFFE) database and the Cohn-Kanade Extended (CK+) database. Support Vector Machine (SVM) was used as the primary classifier, compared to Euclidean distance (L2), to evaluate the performance of the classification methods. The experimental results show that the combination of PCA and SVM achieves a recognition rate of 87% on the JAFFE database and 81% on the CK+ database, with the difference attributed to the complexity and diversity of the CK+ dataset. The study indicates that the PCA and LBP method combined with SVM, outperforms methods using Euclidean distance, demonstrating that SVM is an effective classifier for facial expression recognition in complex experimental setting.

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Phát hành ngày
2025-06-03