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Papers/PAtt-Lite: Lightweight Patch and Attention MobileNet for C...

PAtt-Lite: Lightweight Patch and Attention MobileNet for Challenging Facial Expression Recognition

Jia Le Ngwe, Kian Ming Lim, Chin Poo Lee, Thian Song Ong

2023-06-16Facial Expression Recognition (FER)
PaperPDFCode(official)

Abstract

Facial Expression Recognition (FER) is a machine learning problem that deals with recognizing human facial expressions. While existing work has achieved performance improvements in recent years, FER in the wild and under challenging conditions remains a challenge. In this paper, a lightweight patch and attention network based on MobileNetV1, referred to as PAtt-Lite, is proposed to improve FER performance under challenging conditions. A truncated ImageNet-pre-trained MobileNetV1 is utilized as the backbone feature extractor of the proposed method. In place of the truncated layers is a patch extraction block that is proposed for extracting significant local facial features to enhance the representation from MobileNetV1, especially under challenging conditions. An attention classifier is also proposed to improve the learning of these patched feature maps from the extremely lightweight feature extractor. The experimental results on public benchmark databases proved the effectiveness of the proposed method. PAtt-Lite achieved state-of-the-art results on CK+, RAF-DB, FER2013, FERPlus, and the challenging conditions subsets for RAF-DB and FERPlus.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingCK+Accuracy (7 emotion)100PAtt-Lite
Facial Recognition and ModellingFER+Accuracy95.55PAtt-Lite
Face ReconstructionCK+Accuracy (7 emotion)100PAtt-Lite
Face ReconstructionFER+Accuracy95.55PAtt-Lite
Facial Expression Recognition (FER)FER+Accuracy95.55PAtt-Lite
Facial Expression Recognition (FER)CK+Accuracy (7 emotion)100PAtt-Lite
3DCK+Accuracy (7 emotion)100PAtt-Lite
3DFER+Accuracy95.55PAtt-Lite
3D Face ModellingFER+Accuracy95.55PAtt-Lite
3D Face ModellingCK+Accuracy (7 emotion)100PAtt-Lite
3D Face ReconstructionCK+Accuracy (7 emotion)100PAtt-Lite
3D Face ReconstructionFER+Accuracy95.55PAtt-Lite

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