Belangrijkste concepten
Introducing LANMSFF, a lightweight attention-based deep network incorporating multi-scale feature fusion, to address challenges in facial expression recognition.
Samenvatting
The article introduces the LANMSFF model for facial expression recognition. It addresses challenges of high computational complexity and multi-view head poses. The model incorporates MassAtt and PWFS blocks to enhance feature selection and fusion. Experimental results show robustness and comparable accuracy rates on various datasets.
I. Introduction
- Facial expressions are universal indicators of emotions.
- Deep learning models have shown robustness in recognizing facial expressions.
II. Proposed Method: LANMSFF
- Lightweight FCN model with MassAtt and PWFS blocks.
- Utilizes attention mechanisms and multi-scale features for improved recognition.
III. Experiments & Results
- Achieved accuracy rates of 90.77% on KDEF, 70.44% on FER-2013, and 86.96% on FERPlus datasets.
- Robustness demonstrated against pose variation in multi-view scenarios.
IV. Conclusion & Future Work
- LANMSFF shows promise in addressing challenges of facial expression recognition.
- Future research aims to incorporate dynamic datasets and pose estimation tasks.
Statistieken
"Our proposed approach achieved results comparable to state-of-the-art methods in terms of parameter counts and robustness to pose variation, with accuracy rates of 90.77% on KDEF, 70.44% on FER-2013, and 86.96% on FERPlus datasets."
"The code for LANMSFF is available at https://github.com/AE-1129/LANMSFF."
Citaten
"Deep networks have shown more robustness and effectiveness compared to traditional approaches."
"Utilizing all features from diverse perspectives without considering their importance may negatively impact recognition accuracy."