arXiv:2607.13345v1 Announce Type: new Abstract: We present an audio-text system for the Ambivalence/Hesitancy Video Recognition Challenge of the 11th ABAW Competition. The method excludes visual frames and represents each video as overlapping 5-second windows aligned with transcript timestamps. Each window combines a 320-dimensional prosodic audio descriptor, a 768-dimensional emotion-oriented RoBERTa embedding, and 74 handcrafted features capturing uncertainty, hedging, and attitudinal conflict. Audio and text are fused via temporal cross-attention, while support features are injected prior to gated multiple-instance learning (MIL) pooling to modulate the window's importance. Predictions from five independently initialized models are averaged. On the labeled public development set, the ensemble achieved an average precision of 0.875 and a macro-F1 of 0.72. Our source code is publicly available at https://github.com/Liga-de-IA-PUCPR/abaw-11-ah-challenge/.
Audio-Text Cross-Attention with Psycholinguistic Support Features for Ambivalence/Hesitancy Recognition
Researchers from PUCPR's AI League developed an audio-text system for the 11th ABAW Competition's Ambivalence/Hesitancy Recognition Challenge, achieving 0.875 average precision and 0.72 macro-F1 on the public development set. The method fuses prosodic audio features, emotion-oriented RoBERTa embeddings, and handcrafted psycholinguistic features via temporal cross-attention and gated MIL pooling, excluding visual frames entirely. The ensemble of five models and open-source code aim to advance detection of uncertainty and attitudinal conflict in video.
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