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Supervised framework for automatic recognition and retrieval of interaction: a framework for classification and retrieving videos with similar human interactions

机译:受监管的自动识别和检索交互的框架:用于分类和检索具有类似人类交互作用的视频的框架

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摘要

This study presents supervised framework for automatic recognition and retrieval of interactions (SAFARRIs), a supervised learning framework to recognise interactions such as pushing, punching, and hugging, between a pair of human performers in a video shot. The primary contribution of the study is to extend the vectors of locally aggregated descriptors (VLADs) as a compact and discriminative video encoding representation, to solve the complex class partitioning problem of recognising human interaction. An initial codebook is generated from the training set of video shots, by extracting feature descriptors around the spatiotemporal interest points computed across frames. A bag of action words is generated by encoding the first-order statistics of the visual words using VLAD. Support vector machine classifiers (1 against all) are trained using these codebooks. The authors have verified SAFARRI's accuracy for classification and retrieval (query by example). SAFARRI is free from tracking or recognition of body parts and capable of identifying the region of interaction in video shots. It gives superior retrieval and classification performances over recently proposed methods, on two publicly available human interaction datasets.
机译:这项研究提出了一种用于自动识别和检索交互的监督框架(SAFARRI),一种监督学习的框架来识别视频镜头中一对表演者之间的交互,例如推,拳和拥抱。这项研究的主要贡献是扩展了局部聚合描述符(VLAD)的向量,将其作为一种紧凑而有区别的视频编码表示形式,以解决识别人类交互的复杂类划分问题。通过提取跨帧计算的时空兴趣点周围的特征描述符,从视频镜头的训练集中生成初始密码本。通过使用VLAD对视觉单词的一阶统计数据进行编码来生成一袋动作单词。支持向量机分类器(1对全部)使用这些代码簿进行训练。作者已经验证了SAFARRI分类和检索的准确性(通过示例查询)。 SAFARRI无需跟踪或识别身体部位,并且能够识别视频镜头中的互动区域。在两个公共可用的人类交互数据集上,与最近提出的方法相比,它具有出色的检索和分类性能。

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