一种新的多任务人群分析深度架构

S. Tripathy, R. Srivastava
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引用次数: 2

摘要

近年来,人群分析已成为人群灾害管理的重要工具。人群分析不是一个单一的任务,而是几个相关任务的集合,如人群行为分析、人群计数和人群流量分析。虽然文献中已经提出了不同的个体任务模型,但缺乏群体分析的多任务框架。其中一个主要原因可能是多任务人群分析数据集的可用性。为此,本文利用两个公开的人群行为数据集(MED、GTA)创建了一个多任务人群分析数据集,并提出了一种新的多任务人群分析深度架构。考虑了两种不同的人群分析任务,即人群行为(正常和恐慌)和人群计数。大约89,000帧被注释以获得真实的人群计数。此外,提出了一种两阶段学习机制。在第一阶段,提出了一种新的深度模型,从多尺度低时空特征中提取高时空特征,用于学习正常人群行为和计数;第二阶段利用深度模型的特征,将其输入到一类支持向量机(OC-SVM)中进行人群恐慌检测。将所得结果与现有方法进行了比较,证明了该方法在多任务人群分析中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Deep Architecture for Multi-Task Crowd Analysis
Recently, crowd analysis has become an essential tool for crowd disaster management. The crowd analysis is not a single task but is a collective implication of several related tasks like crowd behavior analysis, crowd counting, and crowd flow analysis. Although different models for individual tasks have been proposed in the literature, there is a lack of a multitasking framework for crowd analysis. One of the main reasons could be the availability of the multitasking crowd analysis dataset. To this end, this paper created a multitask crowd analysis dataset using two publicly available crowd behavior datasets (MED, GTA) and proposed a novel deep architecture for multitasking crowd analysis. Two different crowd analysis tasks are considered, i.e., crowd behavior (normal and panic) and crowd counting. Around 89,000 frames were annotated for obtaining ground-truth crowd counts. In addition to this, a two-stage learning mechanism is proposed. In the first stage, a novel deep model is proposed that extracts high-level spatial-temporal features from the multiscale low-level spatial-temporal features and is used to learn normal crowd behavior and counting. The second stage utilized the features of the deep model and inputted them to the one-class support vector machine (OC-SVM) for crowd panic detection. The obtained results are compared with state-of-the-art and show its effectiveness in multitasking crowd analysis.
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