一种基于偏导数的运动物体自动检测与监测方法

Hannah Rose Esther T, Duraimutharasan N
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引用次数: 0

摘要

本文提出了一种基于偏微分方程技术的运动物体检测和跟踪方法,该方法可以实现向前和向后的跟踪。为了减少输出视频中的噪声,首先将其分成许多帧,然后使用高斯滤波方法对其进行预处理。在获取前向跟踪和后向跟踪的绝对差值后,在二值化帧上计算传递函数。在目标跟踪步骤中,将前向和后向跟踪输出结合起来,以获得期望的结果。像f-measure,准确度,保持率和精度等统计数据用于评估预测技术,并且经典的运动检测方法也用于检查其有效性。根据评价结果,该系统优于常用的高准确率技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Automated Partial Derivative Based Method for Detecting and Monitoring Moving Objects
This work proposes a method for detecting and tracking moving objects that rely onthe partial differential equation technique and can track both forward and backward. In order to reduce the amount of noise in the output video, it is first divided into many frames and then pre-processed using methods for the Gaussian filters. The transfer function is calculated on the binarized frames following the acquisition of the absolute difference for forward tracking and backward tracking. The forward and backward tracking outputs are combined at the object tracking step to get the desired outcome. Statistics like f-measure, accuracy, retention, and precision are used to evaluate the predicted technique, and classic motion detection methods are also used to examine its effectiveness. According to the evaluation results, the suggested system is superior to the usual high-accuracy rate techniques.
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