Abnormal event detection model using an improved ResNet101 in context aware surveillance system

IF 1.2 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Cognitive Computation and Systems Pub Date : 2023-08-02 DOI:10.1049/ccs2.12084
Rakesh Kalshetty, Asma Parveen
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Abstract

Surveillance system plays a significant role for achieving security monitoring in the place of crowd areas. Offline monitoring of these crowd activity is quite challenging because it requires huge number of human resources for attaining efficient tracking. For shortcoming these issue automated and intelligent based system must be developed for efficiently monitor crowd and detect abnormal activity. However the existing methods faces issues like irrelevant features, high cost and process complexity. In this current research context aware surveillance-system utilising hybrid ResNet101-ANN is developed for effective abnormal activity detection. For this proposed approach video acquired from surveillance camera is considered as input. Then, acquired video is segmented into multiple frames. After that pre-processing techniques such as denoising using mean filter, motion deblurring, contrast enhancement using Histogram Equalisation and canny edge detection is applied in this segmented frames. Further, the pre-processed frame is fetched into hybrid ResNet101-ANN classifier for abnormal event classification. Here, ResNet101 is used for extracting the features from the frames and Artificial neural network which replaces the fully connected layer of ResNet101 us used to detect the abnormal activity. If once abnormal-events detected the context aware services generate alert to the user for preventing abnormal-activities. Accuracy, precision, recall, and error values reached for the proposed-model on simulation were 0.98, 0.98, 0.98 and 0.017 respectively. Using this proposed model effective crowd monitoring and abnormal activity detection can be achieved.

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在上下文感知监控系统中使用改进的ResNet101的异常事件检测模型
监控系统在人群聚集区域实现安全监控方面发挥着重要作用。对这些人群活动的离线监控非常具有挑战性,因为它需要大量的人力资源来实现有效的跟踪。针对这些问题,必须开发基于自动化和智能化的系统来有效地监控人群和检测异常活动。然而,现有的方法面临着诸如不相关的特征、高成本和过程复杂性等问题。在目前的研究中,开发了利用混合ResNet101人工神经网络的上下文感知监控系统,用于有效的异常活动检测。对于所提出的方法,从监控摄像机获取的视频被视为输入。然后,获取的视频被分割成多个帧。然后,在该分割帧中应用了预处理技术,如使用均值滤波器的去噪、运动去模糊、使用直方图均衡的对比度增强和精明边缘检测。此外,预处理的帧被提取到用于异常事件分类的混合ResNet101 ANN分类器中。这里,ResNet101用于从帧中提取特征,人工神经网络取代了ResNet101的全连接层,用于检测异常活动。如果一旦检测到异常事件,上下文感知服务就会向用户生成警报以防止异常活动。所提出的模型在模拟中达到的准确度、精密度、召回率和误差值分别为0.98、0.98、0.9 8和0.017。使用该模型可以实现有效的人群监控和异常活动检测。
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来源期刊
Cognitive Computation and Systems
Cognitive Computation and Systems Computer Science-Computer Science Applications
CiteScore
2.50
自引率
0.00%
发文量
39
审稿时长
10 weeks
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