Grunnleggende konsepter
A practical method called Dynamic Resolution Guidance for Facial Expression Recognition (DRGFER) that effectively recognizes facial expressions in images with varying resolutions without compromising FER model accuracy.
Sammendrag
The paper introduces a practical method called Dynamic Resolution Guidance for Facial Expression Recognition (DRGFER) to effectively recognize facial expressions in images with varying resolutions without compromising FER model accuracy.
The framework comprises two main components:
- Resolution Recognition Network (RRN): Determines the resolution of the input image and outputs a binary vector.
- Multi-Resolution Adaptation Facial Expression Recognition Network (MRAFER): Assigns images to suitable facial expression recognition networks based on the resolution.
The authors evaluate DRGFER on widely-used datasets RAF-DB and FERPlus, demonstrating that their method retains optimal model performance at each resolution and outperforms alternative resolution approaches. The proposed framework exhibits robustness against resolution variations and facial expressions, offering a promising solution for real-world applications.
The paper first explores various methods to enable a single FER network model to effectively analyze multi low-resolution facial expression images, such as multi-scale training, domain adaptation, and resolution-aware batch normalization. However, these methods do not yield satisfactory results in practical applications.
The authors then propose the DRGFER framework, which automatically identifies the resolution of the input facial image and forwards it to the corresponding FER network for recognition. The experimental results show that DRGFER consistently outperforms the other tested approaches across various input image resolutions.
Statistikk
Facial expression recognition (FER) is vital for human-computer interaction and emotion analysis, yet recognizing expressions in low-resolution images remains challenging.
Real-world crowd scenes present numerous challenges for FER, including the prevalence of low-resolution images, which can cause a loss of vital feature information and decreased discrimination capabilities.
The reduction in image resolution can be traced back to limitations in camera equipment quality and the distance between the subject and the lens, resulting in varying facial image sizes.
Sitater
"Facial expression recognition (FER) is vital for human-computer interaction and emotion analysis, yet recognizing expressions in low-resolution images remains challenging."
"Real-world crowd scenes present numerous challenges for FER, including the prevalence of low-resolution images, which can cause a loss of vital feature information and decreased discrimination capabilities."
"The reduction in image resolution can be traced back to limitations in camera equipment quality and the distance between the subject and the lens, resulting in varying facial image sizes."