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Main Authors: Perca, Joel, Sante, Luis, Heredia, Juanpablo, Rulff, Joao, Silva, Claudio, Poco, Jorge
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.15225
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author Perca, Joel
Sante, Luis
Heredia, Juanpablo
Rulff, Joao
Silva, Claudio
Poco, Jorge
author_facet Perca, Joel
Sante, Luis
Heredia, Juanpablo
Rulff, Joao
Silva, Claudio
Poco, Jorge
contents Extracting actionable insights from long-duration urban videos is often labor-intensive: analysts must manually sift through raw footage to pinpoint target events or uncover broader behavioral trends. In this work, we present URBANCLIPATLAS, a visual analytics system for exploring long urban videos recorded at street intersections. URBANCLIPATLAS combines retrieval-augmented generation (RAG), taxonomy-aware entity extraction, and video grounding to support event retrieval and interpretation. The system segments extended recordings into short clips, generates textual descriptions with a vision-language model, and indexes them for semantic retrieval. A knowledge graph maps entities and relations from LLM answers onto a domain-specific taxonomy and aligns them with detected objects and trajectories to support visual grounding and verification. URBANCLIPATLAS supports scene retrieval through an augmented chat-based interface and improves scene interpretation by tightly aligning textual outputs with video evidence. This design strengthens the connection between textual reasoning and visual evidence, reducing the effort required to validate model outputs and refine hypotheses. We demonstrate the usefulness of URBANCLIPATLAS on the StreetAware dataset through two case studies involving hazardous scenarios and crossing dynamics at street intersections. URBANCLIPATLAS helps analysts reason about safety- and mobility-related patterns across large urban video collections.
format Preprint
id arxiv_https___arxiv_org_abs_2604_15225
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle UrbanClipAtlas: A Visual Analytics Framework for Event and Scene Retrieval in Urban Videos
Perca, Joel
Sante, Luis
Heredia, Juanpablo
Rulff, Joao
Silva, Claudio
Poco, Jorge
Human-Computer Interaction
Extracting actionable insights from long-duration urban videos is often labor-intensive: analysts must manually sift through raw footage to pinpoint target events or uncover broader behavioral trends. In this work, we present URBANCLIPATLAS, a visual analytics system for exploring long urban videos recorded at street intersections. URBANCLIPATLAS combines retrieval-augmented generation (RAG), taxonomy-aware entity extraction, and video grounding to support event retrieval and interpretation. The system segments extended recordings into short clips, generates textual descriptions with a vision-language model, and indexes them for semantic retrieval. A knowledge graph maps entities and relations from LLM answers onto a domain-specific taxonomy and aligns them with detected objects and trajectories to support visual grounding and verification. URBANCLIPATLAS supports scene retrieval through an augmented chat-based interface and improves scene interpretation by tightly aligning textual outputs with video evidence. This design strengthens the connection between textual reasoning and visual evidence, reducing the effort required to validate model outputs and refine hypotheses. We demonstrate the usefulness of URBANCLIPATLAS on the StreetAware dataset through two case studies involving hazardous scenarios and crossing dynamics at street intersections. URBANCLIPATLAS helps analysts reason about safety- and mobility-related patterns across large urban video collections.
title UrbanClipAtlas: A Visual Analytics Framework for Event and Scene Retrieval in Urban Videos
topic Human-Computer Interaction
url https://arxiv.org/abs/2604.15225