Moving Target Depth Information Extraction Based on Nonlinear Strategy Network

Wei Liu, Mohammad Shabaz, Urvashi Garg
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Abstract

To improve the effect of depth information extraction of moving targets in the network, a nonlinear strategy-oriented method is proposed. With the advancement of science and technology, especially in wireless networks, a large amount of data is provided to people every hour of every day. Hence, it can increase the demand for data analysis tools. Nonlinear system modeling by using rough set theory to extract valuable information from large amounts of information, and then through the analytic hierarchy process (ahp) to determine the effect of input factors, then use particle swarm optimization algorithm (PSO) to find the accurate function, and USES the adaptive and population catastrophe and vaccine algorithm to make it to the local optimum, to achieve the aim of the complex. The experimental results show that, compared with M2 and M1 for 30 groups of samples, the model obtained by using M2 has a better fitting effect on the actual curve. The error of M2 is within ±3%, and the error of M1 is within ±6%, and the error is relatively large. The accuracy of the proposed method is higher than that of the neural network method, which proves that the nonlinear strategy is effective in the actual target depth information extraction.
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基于非线性策略网络的运动目标深度信息提取
为了提高网络中运动目标的深度信息提取效果,提出了一种非线性面向策略的方法。随着科技的进步,尤其是无线网络的发展,每天每小时都有大量的数据提供给人们。因此,它可以增加对数据分析工具的需求。非线性系统建模利用粗糙集理论从大量信息中提取有价值的信息,然后通过层次分析法(ahp)确定输入因素的影响,再利用粒子群优化算法(PSO)找到准确的函数,并利用自适应和种群突变和疫苗算法使其达到局部最优,达到复杂的目的。实验结果表明,与30组样本的M2和M1相比,使用M2得到的模型对实际曲线的拟合效果更好。M2误差在±3%以内,M1误差在±6%以内,误差比较大。该方法的精度高于神经网络方法,证明了非线性策略在实际目标深度信息提取中的有效性。
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