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Dual-Stream Transformer for Generic Event Boundary Captioning

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arxiv 2207.03038 v3 pith:BOWN665F submitted 2022-07-07 cs.CV cs.CL

Dual-Stream Transformer for Generic Event Boundary Captioning

classification cs.CV cs.CL
keywords boundarycaptioningmodelvideocaptionsdual-streamgebctransformer
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper describes our champion solution for the CVPR2022 Generic Event Boundary Captioning (GEBC) competition. GEBC requires the captioning model to have a comprehension of instantaneous status changes around the given video boundary, which makes it much more challenging than conventional video captioning task. In this paper, a Dual-Stream Transformer with improvements on both video content encoding and captions generation is proposed: (1) We utilize three pre-trained models to extract the video features from different granularities. Moreover, we exploit the types of boundary as hints to help the model generate captions. (2) We particularly design an model, termed as Dual-Stream Transformer, to learn discriminative representations for boundary captioning. (3) Towards generating content-relevant and human-like captions, we improve the description quality by designing a word-level ensemble strategy. The promising results on the GEBC test split demonstrate the efficacy of our proposed model.

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