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A Video Semantic Analysis Method Based on Kernel Discriminative Sparse Representation and Weighted KNN

机译:基于核判别稀疏表示和加权KNN的视频语义分析方法

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摘要

To improve the classification performance of sparse representation features, a method of video semantic analysis based on kernel discriminative sparse representation and weighted KNN is proposed in this paper. A discriminative model is built by introducing kernel category function to KSVD dictionary optimization algorithm, mapping the sparse representation features into high-dimensional space. Then the optimal dictionary is generated and applied to compute the sparse representation coefficients of video features. Finally, the video semantic analysis is made by means of weighed KNN method based on optimization sparse representation. Before the video semantic analysis, genetic algorithm is used to get global optimal features and reduce the dimension. Furthermore, the kernel function is introduced to establish discrimination about sparse representation features and the classification vote result is weighed, the purpose of which is to improve the accuracy and rationality of video semantic analysis. The experimental results show that the proposed method significantly improves the discrimination of sparse representation features and is 22.33% higher in accuracy compared with the traditional SVM method based on KSVD. The method is suitable for the classification of video features with nonlinear relationship, tolerating not only the noise but also interference problems in video shot.
机译:为了提高稀疏表示特征的分类性能,提出了一种基于核判别式稀疏表示和加权KNN的视频语义分析方法。通过将核类别函数引入KSVD字典优化算法,将稀疏表示特征映射到高维空间,建立判别模型。然后,生成最佳字典并将其应用于计算视频特征的稀疏表示系数。最后,基于优化稀疏表示的加权KNN方法对视频进行了语义分析。在视频语义分析之前,使用遗传算法获得全局最优特征并减小维数。此外,引入核函数来建立对稀疏表示特征的判别,并对分类投票结果进行加权,目的是提高视频语义分析的准确性和合理性。实验结果表明,与传统的基于KSVD的SVM方法相比,该方法显着提高了稀疏表示特征的判别率,准确性提高了22.33%。该方法适用于具有非线性关系的视频特征的分类,不仅可以容忍噪声,而且可以容忍视频镜头中的干扰问题。

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