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Taylor series based compressive approach and Firefly support vector neural network for tracking and anomaly detection in crowded videos

机译:基于泰勒系列的压缩方法和Firefly支持矢量神经网络,用于追踪和异常检测拥挤视频

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The application areas of multimedia content and computer vision analysis gains remarkable attention towards the motive to recognize the actions of the humans present in the video. Accordingly, crowd behavior analysis is important topic due to the significance of video surveillance in the public area. This work introduces an anomaly detection model by introducing a tracking model and the optimization based classifier for the crowd video. The objects present in the video require tracking since the anomaly depends on the action of the object. This work proposes a hybrid tracking model using the Taylor series based predictive tracking and the compressive tracking approach. The features are extracted from the tracked objects, and a feature vector is formed. Moreover, this work proposes the Firefly based support vector neural network (FSVNN) for the classification purpose. The weights of the proposed FSVNN classifier are trained with the genetic and the firefly algorithm. From the simulation results, it is evident that the proposed anomaly detection model with the FSVNN classifier attained overall better performance with the values of 0.97035, 1, and 0.96, for sensitivity, specificity, and accuracy, respectively. ?
机译:多媒体内容和计算机视觉分析的应用领域对动机产生了显着的关注,以识别视频中存在的人类的行为。因此,由于视频监控在公共区域的意义,人群行为分析是重要的话题。这项工作通过引入跟踪模型和人群视频的优化基于分类来引入异常检测模型。由于异常取决于对象的动作,视频中存在的对象需要跟踪。该工作提出了一种使用基于Taylor系列的预测跟踪和压缩跟踪方法的混合跟踪模型。从跟踪物体中提取特征,形成特征向量。此外,该工作提出了基于萤火虫的支持向量神经网络(FSVNN),用于分类目的。所提出的FSVNN分类器的权重随遗传和萤火虫算法训练。从仿真结果中,显然,具有FSVNN分类器的提出的异常检测模型,其值分别实现了0.97035,1和0.96的值,分别为0.97035,1和0.96,分别为灵敏度,特异性和准确性。 ?

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