基于条件神经场的人类行为识别方法

Ke Guo, Minglei Tong
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引用次数: 0

摘要

本文提出了一种人类行为行为方法来识别公共数据集上单个人的行为。在比较各种特征提取算法的基础上,采用鲁棒性自适应视觉背景提取算法提取算法特征。然后利用质心截距目标区域,转化为一维矢量。最后,利用特征向量进行实验训练和测试。将实验结果与潜在动态条件神经场模型和支持向量机的结果进行比较。实验结果表明,条件神经场模型具有较高的识别率和较好的稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human behavior recognition method based on conditional neural field
In this paper, a human action behavior method is proposed to identify the behavior of a single person on a public data set. After comparing different kinds of feature extraction algorithms, a robust adaptive visual background extraction algorithm is utilized to extract the algorithm feature. Then the centroid is used to intercept the target region and converted into a one-dimensional vector. Finally, we take advantage of feature vector for experiment training and testing. Comparing experimental result with that results of latent-dynamic conditional neural field model and support vector machine. The experimental result show that the conditional neural field model has higher recognition rate and better stability.
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