TL;DR
The KIT Motion-Language Dataset is a large, open, and extensible collection of motion capture data with natural language annotations, designed to facilitate research linking human motion and language.
Contribution
It introduces a standardized dataset combining motion capture data with natural language annotations, along with a novel perplexity-based selection method for efficient annotation.
Findings
Contains 3911 motions and 6278 annotations
Uses a perplexity-based selection to improve annotation quality
Facilitates transparent and comparable research in motion-language linking
Abstract
Linking human motion and natural language is of great interest for the generation of semantic representations of human activities as well as for the generation of robot activities based on natural language input. However, while there have been years of research in this area, no standardized and openly available dataset exists to support the development and evaluation of such systems. We therefore propose the KIT Motion-Language Dataset, which is large, open, and extensible. We aggregate data from multiple motion capture databases and include them in our dataset using a unified representation that is independent of the capture system or marker set, making it easy to work with the data regardless of its origin. To obtain motion annotations in natural language, we apply a crowd-sourcing approach and a web-based tool that was specifically build for this purpose, the Motion Annotation Tool.…
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