TY - JOUR
T1 - Context Aware Crowd Tracking and Anomaly Detection via Deep Learning and Social Force Model
AU - Abdullah, Faisal
AU - Abdelhaq, Maha
AU - Alsaqour, Raed
AU - Alatiyyah, Mohammed Hamad
AU - Alnowaiser, Khaled
AU - Alotaibi, Saud S.
AU - Park, Jeongmin
N1 - Publisher Copyright:
© 2013 IEEE.
PY - 2023
Y1 - 2023
N2 - The world's expanding populace, the variety of human social factors, and the densely populated environment make humans feel uncertain. Individuals need a safety officer who generally deals with security viewpoints for this frailty. Currently, human monitoring techniques are time-consuming, work concentrated, and incapable. Therefore, autonomous surveillance frameworks are necessary for the modern day since they are able to address these problems. Nevertheless, hardships persist. The central concerns incorporate the detachment of the foreground from the scene and the understanding of the contextual structure of the environment for efficiently identifying unusual objects. In our work, we introduced a novel framework to tackle these difficulties by presenting a semantic segmentation technique for separating a foreground object. In our work, Super-pixels are generated using an improved watershed transform and then a conditional random field is implemented to obtain multi-object segmented frames by performing pixel-level labeling. Next, the Social Force model is introduced to extract the contextual structure of the environment via the fusion of a novel chosen particular histogram of an optical stream and inner force model. After using the computed social force, multi-people tracking is performed via three-dimensional template association using percentile rank and non-maximal suppression. Next, multi-object categorization is performed via deep learning Feature Pyramid Network. Finally, by considering the contextual structure of the environment, Jaccard similarity is utilized to make the decision for abnormality detection and identify the unusual objects from the scene. The invented framework is verified through rigorous investigations, and it obtained multi-people tracking efficiency of 92.2% and 89.1% over the UCSD and CUHK Avenue datasets. However, 95.2% and 93.7% abnormality detection efficiency is accomplished over UCSD and CUHK Avenue datasets, respectively.
AB - The world's expanding populace, the variety of human social factors, and the densely populated environment make humans feel uncertain. Individuals need a safety officer who generally deals with security viewpoints for this frailty. Currently, human monitoring techniques are time-consuming, work concentrated, and incapable. Therefore, autonomous surveillance frameworks are necessary for the modern day since they are able to address these problems. Nevertheless, hardships persist. The central concerns incorporate the detachment of the foreground from the scene and the understanding of the contextual structure of the environment for efficiently identifying unusual objects. In our work, we introduced a novel framework to tackle these difficulties by presenting a semantic segmentation technique for separating a foreground object. In our work, Super-pixels are generated using an improved watershed transform and then a conditional random field is implemented to obtain multi-object segmented frames by performing pixel-level labeling. Next, the Social Force model is introduced to extract the contextual structure of the environment via the fusion of a novel chosen particular histogram of an optical stream and inner force model. After using the computed social force, multi-people tracking is performed via three-dimensional template association using percentile rank and non-maximal suppression. Next, multi-object categorization is performed via deep learning Feature Pyramid Network. Finally, by considering the contextual structure of the environment, Jaccard similarity is utilized to make the decision for abnormality detection and identify the unusual objects from the scene. The invented framework is verified through rigorous investigations, and it obtained multi-people tracking efficiency of 92.2% and 89.1% over the UCSD and CUHK Avenue datasets. However, 95.2% and 93.7% abnormality detection efficiency is accomplished over UCSD and CUHK Avenue datasets, respectively.
KW - Conditional random field
KW - feature pyramid network
KW - improved watershed transform
KW - Jaccard similarity
KW - multi-object association
KW - social force model
UR - http://www.scopus.com/inward/record.url?scp=85153684044&partnerID=8YFLogxK
U2 - 10.1109/ACCESS.2023.3293537
DO - 10.1109/ACCESS.2023.3293537
M3 - Article
AN - SCOPUS:85153684044
SN - 2169-3536
VL - 11
SP - 75884
EP - 75898
JO - IEEE Access
JF - IEEE Access
ER -