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Multi-object Detection and Tracking (MODT) Machine Learning Model for Real-Time Video Surveillance Systems

机译:用于实时视频监控系统的多对象检测和跟踪(MODT)机器学习模型

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摘要

Recently, video surveillance has garnered considerable attention in various real-time applications. Due to advances in the field of machine learning, numerous techniques have been developed for multi-object detection and tracking (MODT). This paper introduces a new MODT methodology. The proposed method uses an optimal Kalman filtering technique to track the moving objects in video frames. The video clips were converted based on the number of frames into morphological operations using the region growing model. After distinguishing the objects, Kalman filtering was applied for parameter optimization using the probability-based grasshopper algorithm. Using the optimal parameters, the selected objects were tracked in each frame by a similarity measure. Finally, the proposed MODT framework was executed, and the results were assessed. The experiments showed that the MODT framework achieved maximum detection and tracking accuracies of 76.23% and 86.78%, respectively. The results achieved with Kalman filtering in the MODT process are compared with the results of previous studies.
机译:最近,视频监控在各种实时应用中都会得到了相当大的关注。由于机器学习领域的进步,已经开发了许多用于多物体检测和跟踪(MODT)的技术。本文介绍了一种新的MODT方法。该方法使用最佳的Kalman滤波技术来跟踪视频帧中的移动对象。使用该区域生长模型基于帧数转换为形态学操作的视频剪辑。在区分对象之后,使用基于概率的蚱蜢算法应用Kalman滤波。使用最佳参数,通过相似度量在每个帧中跟踪所选对象。最后,执行所提出的Modt框架,并评估结果。实验表明,MODT框架分别达到了76.23%和86.78%的最大检测和跟踪精度。将ModT过程中的Kalman滤波实现的结果与先前研究的结果进行了比较。

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