Alexandria Engineering Journal (Jan 2023)

Multi-feature fusing local directional ternary pattern for facial expressions signal recognition based on video communication system

  • Linyang Yan,
  • Yu Shi,
  • Minghua Wei,
  • Yalin Wu

Journal volume & issue
Vol. 63
pp. 307 – 320

Abstract

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In the field of Automatic Facial Expression Signal Recognition (AFESR) at video communication system, the fusing feature extraction is playing an extremely important role in recognition accuracy. This paper presents a new feature extraction method, Multi-Feature Fusing Local Directional Ternary Pattern (MFF-LDTP) which keeps more feature information and improvs the robustness under the uncontrollable and wild environment for AFESR. Firstly, the MFF-LDTP operator obtains the global feature of facial expression by Principal Components Analysis (PCA). Secondly, the MFF-LDTP enhances traditional Local Directional Ternary Pattern (LDTP)by using a “kirsch mask” to replace the Frei-Chen masks and selects the threshold for facial expression signal recognition. To effectively avoid generating invalid features, the MFF-LDTP extracts the local feature of eye and mouth which are significant regions by ELDTP. Thirdly, The MFF-LDTP final feature vector includes the linear connection of global and local features. The recognition rate for the extended JAFFE database is 96.5%. And the extended JAFFE includes captured sample images under an uncontrollable and wild environment. The experimental results show that the proposed MFF-LDTP achieved significant improvement and outperformed some state-of-the-art methods.

Keywords