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Video Genre Classification Using Weighted Kernel Logistic Regression

机译:使用加权核逻辑回归的视频流派分类

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Due to the widening semantic gap of videos, computational tools to classify these videos into different genre are highly needed to narrow it. Classifying videos accurately demands good representation of video data and an efficient and effective model to carry out the classification task. Kernel Logistic Regression (KLR), kernel version of logistic regression (LR), proves its efficiency as a classifier, which can naturally provide probabilities and extend to multiclass classification problems. In this paper, Weighted Kernel Logistic Regression (WKLR) algorithm is implemented for video genre classification to obtain significant accuracy, and it shows accurate and faster good results.
机译:由于视频的语义鸿沟不断扩大,因此迫切需要将这些视频分类为不同流派的计算工具。准确地对视频进行分类需要视频数据的良好表示,并需要有效且有效的模型来执行分类任务。逻辑回归(LR)的内核版本内核逻辑回归(KLR)证明了其作为分类器的效率,可以自然地提供概率并扩展到多类分类问题。本文对视频流分类进行了加权核逻辑回归(WKLR)算法,获得了较高的准确率,并且显示了准确,快速的良好效果。

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