Attention-Based Spatiotemporal-Aware Network for Fine-Grained Visual Recognition

Author:

Ren Yili12,Lu Ruidong3,Yuan Guan3ORCID,Hao Dashuai3,Li Hongjue45ORCID

Affiliation:

1. Research Institute of Petroleum Exploration and Development, Beijing 100083, China

2. State Key Laboratory of Continental Shale Oil, Daqing 163002, China

3. School of Computer Science and Technology, China University of Mining and Technology, Xuzhou 221116, China

4. School of Astronautics, Beihang University, Beijing 100191, China

5. Shenzhen Institute of Beihang University, Shenzhen 518063, China

Abstract

On public benchmarks, current macro facial expression recognition technologies have achieved significant success. However, in real-life scenarios, individuals may attempt to conceal their true emotions. Conventional expression recognition often overlooks subtle facial changes, necessitating more fine-grained micro-expression recognition techniques. Different with prevalent facial expressions, weak intensity and short duration are the two main obstacles for perceiving and interpreting a micro-expression correctly. Meanwhile, correlations between pixels of visual data in spatial and channel dimensions are ignored in most existing methods. In this paper, we propose a novel network structure, the Attention-based Spatiotemporal-aware network (ASTNet), for micro-expression recognition. In ASTNet, we combine ResNet and ConvLSTM as a holistic framework (ResNet-ConvLSTM) to extract the spatial and temporal features simultaneously. Moreover, we innovatively integrate two level attention mechanisms, channel-level attention and spatial-level attention, into the ResNet-ConvLSTM. Channel-level attention is used to discriminate the importance of different channels because the contributions for the overall presentation of micro-expression vary between channels. Spatial-level attention is leveraged to dynamically estimate weights for different regions due to the diversity of regions’ reflections to micro-expression. Extensive experiments conducted on two benchmark datasets demonstrate that ASTNet achieves performance improvements of 4.25–16.02% and 0.79–12.93% over several state-of-the-art methods.

Funder

Xuzhou K&D Program

Guangdong Basic and Applied Basic Research Foundation

NSFC

CNPC Innovation Foundation

Publisher

MDPI AG

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