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Key-frame reference selection for non-feedback video communication 被引量:3
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作者 PENG Qiang ZHANG Lei +2 位作者 YANG Tian-wu CHEN Jim X ZHU Ce 《The Journal of China Universities of Posts and Telecommunications》 EI CSCD 2009年第5期92-102,共11页
This article addresses the problem of reference picture optimization in video communication over error prone networks. A novel estimation model for transmission distortion is proposed. This model is capable of recursi... This article addresses the problem of reference picture optimization in video communication over error prone networks. A novel estimation model for transmission distortion is proposed. This model is capable of recursively estimating the overall end-to-end distortion caused by quantization, error propagation, and error concealment. Simulation results show that this model can accurately estimate channel distortion. Then, based on the distortion estimation model, a new non-feedback key-frame reference picture selection (KRPS) algorithm is developed. The optimum reference picture minimizes the transmission distortion under the rate-distortion optimization framework. Extensive experiment results demonstrate that the proposed KRPS algorithm substantially achieves more peak signal to noise ratio (PSNR) gain over traditional prediction, especially in low bit-rate transmission. 展开更多
关键词 End-to-end distortion key-frame reference picture selection error resilience
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Review of techniques for motion capture data processing 被引量:3
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作者 Wei Xiaopeng Liu Rul and Zhang Qiang 《Computer Aided Drafting,Design and Manufacturing》 2012年第1期1-11,共11页
In order to high reality and efficiency, the technique computer animation. With the development of motion capture, a of motion capture (MoCap) has been widely used in the field of large amount of motion capture data... In order to high reality and efficiency, the technique computer animation. With the development of motion capture, a of motion capture (MoCap) has been widely used in the field of large amount of motion capture databases are available and this is significant for the reuse of motion data. But due to the high degree of freedoms and high capture frequency, the dimension of the mo- tion capture data is usually very high and this will lead to a low efficiency in data processing. So how to process the high dimension data and design an efficient and effective retrieval approach has become a challenge which we can't ignore. In this paper, first we lay out some problems about the key techniques in motion capture data processing. Then the existing approaches are analyzed and sum- marized. At last, some future work is proposed. 展开更多
关键词 3D motion capture motion sequence segmentation key-frame extraction motion retrieval
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Image label transfer: Short video labelling by using frame auto-encoder
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作者 Lü Chaohui Huang Yiyang 《The Journal of China Universities of Posts and Telecommunications》 EI CSCD 2020年第1期92-99,共8页
Short videos on the Internet have a huge amount, but most of them are unlabeled. In this paper, a rough short video labelling method based on the image classification neural network is proposed. Convolutional auto-enc... Short videos on the Internet have a huge amount, but most of them are unlabeled. In this paper, a rough short video labelling method based on the image classification neural network is proposed. Convolutional auto-encoder is applied to train and learn unlabeled video frames, in order to obtain feature in the specific level. With these features, the video key-frames are extracted by the feature clustering method. These key-frames which represent the video content are put into an image classification network, so that the labels of every video clip can be got. In addition, the different architectures of convolutional auto-encoder are estimated, and a better performance architecture through the experiment result is selected. In the final experiment, the video frame features from the convolutional auto-encoder are compared with those from other extraction methods, where it illustrates remarkable results by the proposed method. 展开更多
关键词 IMAGE feature VIDEO labelling convolutional neural network auto-encoder cluster key-frame
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Movie Scene Recognition Using Panoramic Frame and Representative Feature Patches
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作者 高广宇 马华东 《Journal of Computer Science & Technology》 SCIE EI CSCD 2014年第1期155-164,共10页
Recognizing scene information in images or has attracted much attention in computer vision or videos, such as locating the objects and answering "Where am research field. Many existing scene recognition methods focus... Recognizing scene information in images or has attracted much attention in computer vision or videos, such as locating the objects and answering "Where am research field. Many existing scene recognition methods focus on static images, and cannot achieve satisfactory results on videos which contain more complex scenes features than images. In this paper, we propose a robust movie scene recognition approach based on panoramic frame and representative feature patch. More specifically, the movie is first efficiently segmented into video shots and scenes. Secondly, we introduce a novel key-frame extraction method using panoramic frame and also a local feature extraction process is applied to get the representative feature patches (RFPs) in each video shot. Thirdly, a Latent Dirichlet Allocation (LDA) based recognition model is trained to recognize the scene within each individual video scene clip. The correlations between video clips are considered to enhance the recognition performance. When our proposed approach is implemented to recognize the scene in realistic movies, the experimental results shows that it can achieve satisfactory performance. 展开更多
关键词 movie scene recognition key-frame extraction representative feature panoramic frame
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