2016 22nd International Conference on Automation and Computing (ICAC) 2016
DOI: 10.1109/iconac.2016.7604963
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An approach to detect crowd panic behavior using flow-based feature

Abstract: Abstract-With the purpose of achieving automated detection of crowd abnormal behavior in public, this paper discusses the category of typical crowd and individual behaviors and their patterns. Popular image features for abnormal behavior detection are also introduced, including global flow based features such as optical flow, and local spatio-temporal based features such as Spatio-temporal Volume (STV). After reviewing some relative abnormal behavior detection algorithms, a brandnew approach to detect crowd pa… Show more

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Cited by 9 publications
(5 citation statements)
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References 12 publications
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“…Baker et al [20,21] used STV for 3D scene segmentation. Ngo et al [22] used STT techniques for the detection of camera cuts, wipes and dissolves in a video sequence. In this approach, a STT was analyzed by first convolving with the first derivative Gaussian, and then processed using Gabor decomposition, in which the real components of multiple spatial-frequency channel envelopes were retrieved to form the texture feature vector.…”
Section: Stv-based Motion Encapsulation and Stt Feature Representationmentioning
confidence: 99%
“…Baker et al [20,21] used STV for 3D scene segmentation. Ngo et al [22] used STT techniques for the detection of camera cuts, wipes and dissolves in a video sequence. In this approach, a STT was analyzed by first convolving with the first derivative Gaussian, and then processed using Gabor decomposition, in which the real components of multiple spatial-frequency channel envelopes were retrieved to form the texture feature vector.…”
Section: Stv-based Motion Encapsulation and Stt Feature Representationmentioning
confidence: 99%
“…Succession of panic attacks may result in a change or imbalance of neurotransmitters in the brain of patients. In addition, if panic attacks relapse often with the continuous fear, it will cause crucial impact in the patient's daily life [8].…”
Section: Introductionmentioning
confidence: 99%
“…When the ribbon-shaped motion texture becomes denser and more irregular, the corresponding magnitude in the statistical histogram will increase more rapidly. Based on the preliminary study [1], the algorithm used for crowd behavior analysis can be simplified as follows: at the training (current-state template building) stage, the average value of the first group of frames is calculated, and this value is then used to define the Initial state. Once an empirical threshold value is defined (subjecting to application scenarios such as indoor/outdoor, crowd density, and dynamic state), if the difference between a consecutive pair of STT slices exceeds the threshold then it can be presumed a crowd behavioral pattern change has occurred.…”
Section: Optimization Through Gabor Filteringmentioning
confidence: 99%
“…A typical pipeline of the crowd abnormality detecting system contains three processing phases [1]. In the first video data acquisition phase, the raw video signals are collected and stored in suitable digital formats; and then static or dynamic features contained within the information packets will be extracted; and at last, predefined feature patterns describing signal-, statistical-, and/or even semantic-level explanations of the "video events" will be used to evaluate the similarity and differences of the features extracted from the live feeds [2,3 and 4].…”
Section: Introductionmentioning
confidence: 99%