Integrated Semantic and Temporal Alignment for Interactive Video Retrieval
Abstract: The growing volume of video data and the introduction of complex retrieval challenges, such as the Temporal Retrieval and Alignment of Key Events (TRAKE) task at the Ho Chi Minh City AI Challenge 2025, expose critical limitations in existing systems. Many methodologies lack scalable, holistic architectures and rely on "frozen" embedding models that fail on out-of-knowledge (OOK) or real-world queries. This paper introduces the comprehensive video retrieval framework developed by team AIO_Owlgorithms to address these gaps. Our system features an architecture integrating TransNetV2 for scene segmentation, BEiT-3 for visual embeddings in Milvus, and Gemini OCR for metadata in Elasticsearch. We propose two components: (1) \textbf{QUEST} (Query Understanding and External Search for Out-of-Knowledge Tasks), a two-branch framework that leverages a LLM for query rewriting and an external image search pathway to resolve OOK queries; and (2) \textbf{DANTE} (Dynamic Alignment of Narrative Temporal Events), a dynamic programming algorithm that efficiently solves the temporally-incoherent TRAKE task. These contributions form a robust and intelligent system that significantly advances the state-of-the-art in handling complex, real-world video search queries.
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