An Intelligent Extraversion Analysis Scheme from Crowd Trajectories for Surveillance
Wenxi Liu, Yuanlong Yu, Chun-Yang Zhang, Genggeng Liu, Naixue Xiong

TL;DR
This paper introduces a novel method for analyzing individual extraversion in crowd movements using trajectory data, combining motion and social metrics, and employing active learning for efficient scoring across diverse scenes.
Contribution
It presents the first approach to measure extraversion from crowd trajectories, integrating social metrics and active learning for universal applicability.
Findings
Effective composite motion descriptor for extraversion
Active learning reduces computation cost
Successful measurement of extraversion in real crowd scenes
Abstract
In recent years, crowd analysis is important for applications such as smart cities, intelligent transportation system, customer behavior prediction, and visual surveillance. Understanding the characteristics of the individual motion in a crowd can be beneficial for social event detection and abnormal detection, but it has rarely been studied. In this paper, we focus on the extraversion measure of individual motions in crowds based on trajectory data. Extraversion is one of typical personalities that is often observed in human crowd behaviors and it can reflect not only the characteristics of the individual motion, but also the that of the holistic crowd motions. To our best knowledge, this is the first attempt to analyze individual extraversion of crowd motions based on trajectories. To accomplish this, we first present a effective composite motion descriptor, which integrates the basic…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Human Mobility and Location-Based Analysis · Video Surveillance and Tracking Methods
