Significant detection of video can more rationally allocate computing resources and reduce the amount of computation to improve accuracy.Deep learning can extract the edge features of the image, providing technical support for video saliency.This paper proposes a new detection method.We combine the Convolutional Neural Network (CNN) and the Deep Bidirectional LSTM Network (DB-LSTM) to learn the spatio-temporal features by exploring the object motion information and object motion information to generate video.A continuous frame of significant images.We also analyzed the sample database and found that human attention and significant conversion are time-dependent, so we also considered the significance detection of video cross-frame.Finally, experiments show that our method is superior to other advanced methods.
Yingyue XuXiaopeng HongXin LiuGuoying Zhao