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3 months ago

Facial Expression Recognition using Residual Masking Network

{Tuan Anh Tran The Huynh Vu Luan Pham}

Abstract

Automatic facial expression recognition (FER) has gained much attention due to its applications in human-computer interaction. Among the approaches to improve FER tasks, this paper focuses on deep architecture with the attention mechanism. We propose a novel Masking Idea to boost the performance of CNN in facial expression task. It uses a segmentation network to refine feature maps, enabling the network to focus on relevant information to make correct decisions. In experiments, we combine the ubiquitous Deep Residual Network and Unet-like architecture to produce a Residual Masking Network. The proposed method holds state-of-the-art (SOTA) accuracy on the well-known FER2013 and private VEMO datasets.

Benchmarks

BenchmarkMethodologyMetrics
facial-expression-recognition-on-fer2013Ensemble ResMaskingNet with 6 other CNNs
Accuracy: 76.82
facial-expression-recognition-on-fer2013Residual Masking Network
Accuracy: 74.14

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Facial Expression Recognition using Residual Masking Network | Papers | HyperAI