Video saliency detection based on spatiotemporal feature learning

ICIP(2014)

引用 28|浏览8
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摘要
A video saliency detection algorithm based on feature learning, called ROCT, is proposed in this work. To detect salient regions, we design multiple spatiotemporal features and combine those features using a support vector machine (SVM). We extract the spatial features of rarity, compactness, and center prior by analyzing the color distribution in each image frame. Also, we obtain the temporal features of motion intensity and motion contrast to identify visually important motions. We train an SVM classifier using the spatiotemporal features extracted from training video sequences. Finally, we compute the visual saliency of each patch in an input sequence using the trained classifier. Experimental results demonstrate that the proposed algorithm provides more accurate and reliable results of saliency detection than conventional algorithms.
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关键词
video signal processing,color distribution,motion intensity,video sequences,motion contrast,learning (artificial intelligence),video saliency detection,video saliency detection algorithm,svm classifier,image frame,feature extraction,image classification,support vector machine,image sequences,roct,spatiotemporal features,spatiotemporal feature learning,machine learning,support vector machines
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