Human Activity Recognition based on Dynamic Spatio-Temporal Relations
Zhenyu Liu, Yaqiang Yao, Yan Liu, Yuening Zhu, Zhenchao Tao, Lei Wang,, Yuhong Feng

TL;DR
This paper presents a novel method for human activity recognition that models actions through spatio-temporal graphs and sequential models, effectively capturing the evolution of complex activities in videos.
Contribution
It introduces a comprehensive spatio-temporal graph representation and a hierarchical body decomposition for improved recognition of human activities.
Findings
Effective recognition on Cornell Activity Dataset
Captures dynamic evolution of actions
Improves accuracy in long video analysis
Abstract
Human activity, which usually consists of several actions, generally covers interactions among persons and or objects. In particular, human actions involve certain spatial and temporal relationships, are the components of more complicated activity, and evolve dynamically over time. Therefore, the description of a single human action and the modeling of the evolution of successive human actions are two major issues in human activity recognition. In this paper, we develop a method for human activity recognition that tackles these two issues. In the proposed method, an activity is divided into several successive actions represented by spatio temporal patterns, and the evolution of these actions are captured by a sequential model. A refined comprehensive spatio temporal graph is utilized to represent a single action, which is a qualitative representation of a human action incorporating both…
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Taxonomy
TopicsHuman Pose and Action Recognition · Context-Aware Activity Recognition Systems · Gait Recognition and Analysis
