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Scale invariant features extraction for stereo vision 被引量:4

Scale invariant features extraction for stereo vision
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摘要 Stable local feature detection is a fundamental component of many stereo vision problems such as 3-D reconstruction, object localization, and object tracking. A robust method for extracting scale-invariant feature points is presented. First, the Harris corners in three-level pyramid are extracted. Then, the points detected at the highest level of the pyramid are correctly propagated to the lower level by pyramid based scale invariant (PBSI) method. The corners detected repeatedly in different levels are chosen as final feature points. Finally, the characteristic scale is obtained based on maximum entropy method. The experimental results show that the algorithm has low computation cost, strong antinoise capability, and excellent performance in the presence of significant scale changes. Stable local feature detection is a fundamental component of many stereo vision problems such as 3-D reconstruction, object localization, and object tracking. A robust method for extracting scale-invariant feature points is presented. First, the Harris corners in three-level pyramid are extracted. Then, the points detected at the highest level of the pyramid are correctly propagated to the lower level by pyramid based scale invariant (PBSI) method. The corners detected repeatedly in different levels are chosen as final feature points. Finally, the characteristic scale is obtained based on maximum entropy method. The experimental results show that the algorithm has low computation cost, strong antinoise capability, and excellent performance in the presence of significant scale changes.
出处 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2009年第1期50-54,共5页 系统工程与电子技术(英文版)
基金 supported by the Development Program of China and the National Science Foundation Project (60475024) National High Technology Research (2006AA09Z203)
关键词 pyramid matching scale invariant Harris corners characteristics scale. pyramid matching, scale invariant, Harris corners, characteristics scale.
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同被引文献57

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