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Optimal support vector machine and hybrid tracking model for behaviour recognition in highly dense crowd videos

机译:最优支持向量机和混合跟踪在高度密集的行为识别模型群视频

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Purpose Object detection models have gained considerable popularity as they aid in lot of applications, like monitoring, video surveillance, etc. Object detection through the video tracking faces lot of challenges, as most of the videos obtained as the real time stream are affected due to the environmental factors. Design/methodology/approach This research develops a system for crowd tracking and crowd behaviour recognition using hybrid tracking model. The input for the proposed crowd tracking system is high density crowd videos containing hundreds of people. The first step is to detect human through visual recognition algorithms. Here, a priori knowledge of location point is given as input to visual recognition algorithm. The visual recognition algorithm identifies the human through the constraints defined within Minimum Bounding Rectangle (MBR). Then, the spatial tracking model based tracks the path of the human object movement in the video frame, and the tracking is carried out by extraction of color histogram and texture features. Also, the temporal tracking model is applied based on NARX neural network model, which is effectively utilized to detect the location of moving objects. Once the path of the person is tracked, the behaviour of every human object is identified using the Optimal Support Vector Machine which is newly developed by combing SVM and optimization algorithm, namely MBSO. The proposed MBSO algorithm is developed through the integration of the existing techniques, like BSA and MBO. Findings The dataset for the object tracking is utilized from Tracking in high crowd density dataset. The proposed OSVM classifier has attained improved performance with the values of 0.95 for accuracy. Originality/value This paper presents a hybrid high density video tracking model, and the behaviour recognition model. The proposed hybrid tracking model tracks the path of the object in the video through the temporal tracking and spatial tracking. The features train the proposed OSVM classifier based on the weights selected by the proposed MBSO algorithm. The proposed MBSO algorithm can be regarded as the modified version of the BSO algorithm.
机译:目的获得了目标检测模型相当受欢迎,因为他们帮助很多应用程序,如监控、视频监测等。视频跟踪面临很多挑战,因为大多数获得的视频的实时流由于环境因素的影响。设计/方法/方法本研究为人群开发一个系统跟踪和人群使用混合跟踪行为识别模型。系统包含高密度人群视频数百人。人类通过视觉识别算法。在这里,一个位置点的先验知识作为视觉识别算法的输入。视觉识别算法标识人类通过内定义的约束最小边界矩形(MBR)。空间跟踪模型基于跟踪的路径人类对象运动的视频帧,跟踪进行提取颜色直方图和纹理特性。时间跟踪应用基于NARX模型神经网络模型是有效的利用检测的位置移动对象。每个人的行为对象标识使用的最优支持向量机新开发的结合支持向量机和优化算法,即MBSO。通过集成的算法开发现有的技术,如BSA和MBO。调查结果的数据集对象跟踪利用高密度人群的跟踪数据集。获得通过的值来改善性能0.95精度。提出了一种混合高密度视频跟踪模型和行为识别模型。提出了混合跟踪模型跟踪的路径通过时间视频中的对象跟踪和空间跟踪。拟议中的OSVM分类器基于权重选择提出MBSO算法。提出MBSO算法可以被视为修改版的BSO算法。

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