@Article{cmc.2022.023852, AUTHOR = {Manar Elshahawy, Ahmed O. Aseeri, Shaker El-Sappagh, Hassan Soliman, Mohammed Elmogy, Mervat Abu-Elkheir}, TITLE = {Identification and Classification of Crowd Activities}, JOURNAL = {Computers, Materials \& Continua}, VOLUME = {72}, YEAR = {2022}, NUMBER = {1}, PAGES = {815--832}, URL = {http://www.techscience.com/cmc/v72n1/46866}, ISSN = {1546-2226}, ABSTRACT = {The identification and classification of collective people's activities are gaining momentum as significant themes in machine learning, with many potential applications emerging. The need for representation of collective human behavior is especially crucial in applications such as assessing security conditions and preventing crowd congestion. This paper investigates the capability of deep neural network (DNN) algorithms to achieve our carefully engineered pipeline for crowd analysis. It includes three principal stages that cover crowd analysis challenges. First, individual's detection is represented using the You Only Look Once (YOLO) model for human detection and Kalman filter for multiple human tracking; Second, the density map and crowd counting of a certain location are generated using bounding boxes from a human detector; and Finally, in order to classify normal or abnormal crowds, individual activities are identified with pose estimation. The proposed system successfully achieves designing an effective collective representation of the crowd given the individuals in addition to introducing a significant change of crowd in terms of activities change. Experimental results on MOT20 and SDHA datasets demonstrate that the proposed system is robust and efficient. The framework achieves an improved performance of recognition and detection people with a mean average precision of 99.0%, a real-time speed of 0.6 ms non-maximum suppression (NMS) per image for the SDHA dataset, and 95.3% mean average precision for MOT20 with 1.5 ms NMS per image.}, DOI = {10.32604/cmc.2022.023852} }