Global Motion Parameter Extraction and Deformable Block Motion Estimation
スポンサーリンク
概要
- 論文の詳細を見る
A global motion parameter estimation method is proposed. The method can be used to segment an image sequence into regions of different moving objects. For any two pixels belonging to the same moving object, their associated global motion components have a fixed relationship from the projection geometry of camera imaging. Therefore, by examining the measured motion vectors we are able to group pixels into objects and, at the same time, identify some global motion information. In the presence of camera zoom, the object shape is distorted and conventional translational motion estimation may not yield accurate motion modeling. A deformable block motion estimation scheme is thus proposed to estimate the local motion of an object in this situation. Some simulation results are reported. For an artificially generated sequence containing only zoom activity, we find that the maximum estimation error in the zoom factor is about 2.8%. Rather good moving object segmentation results are obtained using the proposed object local motion estimation method after zoom extraction. The deformable block motion compensation is also seen to outperform conventional translational block motion compensation for video material containing zoom activity.
- 社団法人電子情報通信学会の論文
- 1999-08-25
著者
-
Lin David
Department Of Electronics Engineering And Center For Telecommunications Research National Chiao Tung
-
Lin David
Department Of Electronics Eng. National Chaio-tung University
-
SU Chi-Hsi
Department of Electronics Eng. National Chaio-Tung University
-
HANG Hsueh-Ming
Department of Electronics Eng. National Chaio-Tung University
関連論文
- Global Motion Parameter Extraction and Deformable Block Motion Estimation
- TED-AJ03-539 MOLECULAR PLANE POISEUILLE FLOW FOR THE TIP4P AND LENNARD-JONES POTENTIALS
- Multiple Access over Fading Multipath Channels Employing Chip-Interleaving Code-Division Direct-Sequence Spread Spectrum(Special Issue on Multiple Access and Signal Transmission Techniques for Future Mobile Communications)
- A Relevance Feedback Image Retrieval Scheme Using Multi-Instance and Pseudo Image Concepts(Image Processing and Video Processing)
- Edge-Based Morphological Processing for Efficient and Accurate Video Object Extraction(Image Recognition, Computer Vision)