基于大数据的监控视频图像模糊特征智能识别方法

Jing-jing Wang
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引用次数: 1

摘要

针对传统模糊BP模糊特征提取方法在监控视频图像中模糊特征提取错误率高的问题,提出了一种基于大数据的监控视频图像模糊特征提取算法。采用匹配滤波方法降低监控视频图像的噪声,采用自适应关联规则学习算法构建模糊特征大数据集,采用边缘轮廓特征检测算法进行特征分解。采用关键动作点融合方法增强监控视频图像的模糊信息,提取监控视频图像的区域等效直方图。将提取的灰度直方图输入到BP神经网络模糊特征提取器中,利用自适应关联规则学习算法对模糊特征提取器隐藏层的监控视频图像特征聚类进行优化。实现了批量监控视频图像的模糊特征提取与优化。仿真结果表明,该算法具有较好的准确率、较强的抗类间属性干扰能力和较高的监控视频图像输出召回率。对监控视频图像进行模糊特征提取,时间开销小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Recognition Method of Fuzzy Features of Surveillance Video Image Based on Big Data
In order to solve the problem of high error rate of fuzzy feature extraction in monitoring video image based on traditional fuzzy BP fuzzy feature extraction method, a fuzzy feature extraction algorithm for monitoring video image based on big data is proposed. The matched filtering method is used to reduce the noise of the monitored video image, the adaptive association rule learning algorithm is used to construct the fuzzy feature large data set, and the edge profile feature detection algorithm is used for feature decomposition. The key action point fusion method is used to enhance the fuzzy information of the monitored video image, and the region equivalent histogram of the monitored video image is extracted. The extracted gray histogram is input into the BP neural network fuzzy feature extractor, and the adaptive association rule learning algorithm is used to optimize the monitoring video image feature clustering in the hidden layer of the fuzzy feature extractor. The fuzzy feature extraction and optimization of batch monitoring video image is realized. The simulation results show that the algorithm has good accuracy, strong ability to resist inter-class attribute disturbance, and high recall rate of monitoring video image output. The time cost of fuzzy feature extraction for monitoring video image is small.
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