HUST-FALL
收藏IEEE2026-04-17 收录
下载链接:
https://ieee-dataport.org/documents/hust-fall-0
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资源简介:
HUST-FALL is a fine-grained text-video multimodal dataset specifically designed for unconstrained fall detection in the wild. It integrates videos from diverse sources\u2014including open-source datasets and online platforms\u2014covering a wide range of fall scenarios, subjects, environments, lighting conditions, and occlusion patterns. Unlike existing fall detection datasets that are primarily collected under controlled indoor settings, HUST-FALL captures the complexity and variability of real-world falls. Each video is further annotated with structured fine-grained textual descriptions across four key dimensions: body dynamics, environmental interaction, subject attributes, and scene context. These rich annotations serve as high-level semantic guidance to facilitate vision-language reasoning, making HUST-FALL a challenging yet valuable benchmark for advancing generalizable fall detection models in real-world applications.
提供机构:
Zhihao Zha; Shiman Wu



