A fusion architecture based on TBM for camera motion classification

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摘要

We propose in this paper an original method of camera motion classification based on Transferable Belief Model (TBM). It consists in locating in a video the motions of translation and zoom, and the absence of camera motion (i.e static camera). The classification process is based on a rule-based system that is divided into three stages. From a parametric motion model, the first stage consists in combining data to obtain frame-level belief masses on camera motions. To ensure the temporal coherence of motions, a filtering of belief masses according to TBM is achieved. The second stage carries out a separation between static and dynamic frames. In the third stage, a temporal integration allows the motion to be studied on a set of frames and to preserve only those with significant magnitude and duration. Then, a more detailed description of each motion is given. Experimental results obtained show the effectiveness of the method.

论文关键词:Camera motion classification,Transferable belief model,Motion estimation,Motion description,Video indexing

论文评审过程:Received 17 March 2006, Revised 20 December 2006, Accepted 8 January 2007, Available online 13 January 2007.

论文官网地址:https://doi.org/10.1016/j.imavis.2007.01.001