Facial Expression Recognition On Acted Facial
Metriken
Accuracy(on validation set)
Ergebnisse
Leistungsergebnisse verschiedener Modelle zu diesem Benchmark
Modellname | Accuracy(on validation set) | Paper Title | Repository |
---|---|---|---|
LResNet50E-IR (5 models with augmentation) | 65.5% | Exploring Emotion Features and Fusion Strategies for Audio-Video Emotion Recognition | - |
ResNet50 | 65.5% | Exploring Emotion Features and Fusion Strategies for Audio-Video Emotion Recognition | - |
EAC | 65.32% | Learn From All: Erasing Attention Consistency for Noisy Label Facial Expression Recognition | |
resnet18_noisy | 55.17% | Noisy Student Training using Body Language Dataset Improves Facial Expression Recognition | - |
Multi-task EfficientNet-B0 | 59.27 | Facial expression and attributes recognition based on multi-task learning of lightweight neural networks | |
LResNet50E-IR (1 model) | 61.1% | Exploring Emotion Features and Fusion Strategies for Audio-Video Emotion Recognition | - |
resnet18 | 51.181% | Frame attention networks for facial expression recognition in videos | |
LResNet50E-IR (1 model with augmentation) | 63.7% | Exploring Emotion Features and Fusion Strategies for Audio-Video Emotion Recognition | - |
0 of 8 row(s) selected.