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Enhancing Video-Language Representations With Structural Spatio-Temporal Alignment

  • Hao Fei
  • , Shengqiong Wu
  • , Meishan Zhang*
  • , Min Zhang
  • , Tat Seng Chua
  • , Shuicheng Yan
  • *Corresponding author for this work
  • National University of Singapore
  • Harbin Institute of Technology Shenzhen
  • Skywork AI

Research output: Contribution to journalArticlepeer-review

Abstract

While pre-training large-scale video-language models (VLMs) has shown remarkable potential for various downstream video-language tasks, existing VLMs can still suffer from certain commonly seen limitations, e.g., coarse-grained cross-modal aligning, under-modeling of temporal dynamics, detached video-language view. In this work, we target enhancing VLMs with a fine-grained structural spatio-temporal alignment learning method (namely Finsta). First of all, we represent the input texts and videos with fine-grained scene graph (SG) structures, both of which are further unified into a holistic SG (HSG) for bridging two modalities. Then, an SG-based framework is built, where the textual SG (TSG) is encoded with a graph Transformer, while the video dynamic SG (DSG) and the HSG are modeled with a novel recurrent graph Transformer for spatial and temporal feature propagation. A spatial-temporal Gaussian differential graph Transformer is further devised to strengthen the sense of the changes in objects across spatial and temporal dimensions. Next, based on the fine-grained structural features of TSG and DSG, we perform object-centered spatial alignment and predicate-centered temporal alignment respectively, enhancing the video-language grounding in both the spatiality and temporality. We design our method as a plug&play system, which can be integrated into existing well-trained VLMs for further representation augmentation, without training from scratch or relying on SG annotations in downstream applications. On 6 representative VL modeling tasks over 12 datasets in both standard and long-form video scenarios, Finsta consistently improves the existing 13 strong-performing VLMs persistently, and refreshes the current state-of-the-art end task performance significantly in both the fine-tuning and zero-shot settings.

Original languageEnglish
Pages (from-to)7701-7719
Number of pages19
JournalIEEE Transactions on Pattern Analysis and Machine Intelligence
Volume46
Issue number12
DOIs
StatePublished - 2024
Externally publishedYes

Keywords

  • Scene graphs
  • spatio-temporal grounding
  • structured semantics learning
  • video-language understanding

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