Authors
Cigdem Beyan, Andrea Zunino, Muhammad Shahid, Vittorio Murino
Publication date
2021
Journal
IEEE Transactions on Affective Computing
Volume
12
Issue
4
Pages
1084-1099
Publisher
IEEE
Description
This paper addresses nonverbal behavior analysis for the classification of perceived personality traits using novel deep visual activity (VA)-based features extracted only from key-dynamic images. Dynamic images represent short-term VA. Key-dynamic images carry more discriminative information i.e., nonverbal features (NFs) extracted from them contribute to the classification more than NFs extracted from other dynamic images. Dynamic image construction, learning long-term VA with CNN+LSTM, and detecting spatio-temporal saliency are applied to determine key-dynamic images. Once VA-based NFs are extracted, they are encoded using covariance, and resulting representation is used for classification. This method was evaluated on two datasets: small group meetings and vlogs. For the first dataset, proposed method outperforms not only the state-of-the-art VA-based methods but also multi-modal approaches …
Total citations
202020212022202320242107124
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