CVDec 14, 2022

Most Important Person-guided Dual-branch Cross-Patch Attention for Group Affect Recognition

arXiv:2212.07055v214 citationsh-index: 28
Originality Incremental advance
AI Analysis

This addresses group emotion analysis for applications like social behavior understanding, though it appears incremental by building on existing attention mechanisms.

The paper tackles group affect recognition by incorporating the Most Important Person concept and a dual-branch cross-patch attention transformer, achieving state-of-the-art performance on datasets like GAF 3.0, GroupEmoW, and HECO.

Group affect refers to the subjective emotion that is evoked by an external stimulus in a group, which is an important factor that shapes group behavior and outcomes. Recognizing group affect involves identifying important individuals and salient objects among a crowd that can evoke emotions. However, most existing methods lack attention to affective meaning in group dynamics and fail to account for the contextual relevance of faces and objects in group-level images. In this work, we propose a solution by incorporating the psychological concept of the Most Important Person (MIP), which represents the most noteworthy face in a crowd and has affective semantic meaning. We present the Dual-branch Cross-Patch Attention Transformer (DCAT) which uses global image and MIP together as inputs. Specifically, we first learn the informative facial regions produced by the MIP and the global context separately. Then, the Cross-Patch Attention module is proposed to fuse the features of MIP and global context together to complement each other. Our proposed method outperforms state-of-the-art methods on GAF 3.0, GroupEmoW, and HECO datasets. Moreover, we demonstrate the potential for broader applications by showing that our proposed model can be transferred to another group affect task, group cohesion, and achieve comparable results.

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