MuHAVi: A Multicamera Human Action Video Dataset for the Evaluation of Action Recognition Methods

Sanchit Singh, S. Velastín, Hossein Ragheb
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引用次数: 183

Abstract

This paper describes a body of multicamera humanaction video data with manually annotated silhouette datathat has been generated for the purpose of evaluatingsilhouette-based human action recognition methods. Itprovides a realistic challenge to both the segmentationand human action recognition communities and can act asa benchmark to objectively compare proposed algorithms.The public multi-camera, multi-action dataset is animprovement over existing datasets (e.g. PETS, CAVIAR,soccerdataset) that have not been developed specificallyfor human action recognition and complements otheraction recognition datasets (KTH, Weizmann, IXMAS,HumanEva, CMU Motion). It consists of 17 action classes,14 actors and 8 cameras. Each actor performs an actionseveral times in the action zone. The paper describes thedataset and illustrates a possible approach to algorithmevaluation using a previously published action simplerecognition method. In addition to showing an evaluationmethodology, these results establish a baseline for otherresearchers to improve upon.
MuHAVi:一个用于动作识别方法评价的多摄像头人体动作视频数据集
本文描述了一组带有手动注释轮廓数据的多摄像头人体动作视频数据,这些数据是为了评估基于轮廓的人体动作识别方法而生成的。它为分割和人类行为识别社区提供了一个现实的挑战,可以作为客观比较所提出算法的基准。公共多相机,多动作数据集是对现有数据集(例如pet, CAVIAR,soccerdataset)的改进,这些数据集尚未专门为人类动作识别开发,并补充了其他动作识别数据集(KTH, Weizmann, IXMAS,HumanEva, CMU Motion)。它由17个动作班、14名演员和8台摄像机组成。每个参与者在动作区域执行一个动作数次。本文描述了数据集,并说明了使用先前发布的动作简单识别方法进行算法评估的可能方法。除了展示评估方法之外,这些结果还为其他研究人员建立了一个改进的基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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