SIFT Features Tracking for Video Stabilization

S. Battiato, G. Gallo, G. Puglisi, Salvatore Scellato
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引用次数: 228

Abstract

This paper presents a video stabilization algorithm based on the extraction and tracking of scale invariant feature transform features through video frames. Implementation of SIFT operator is analyzed and adapted to be used in a feature-based motion estimation algorithm. SIFT features are extracted from video frames and then their trajectory is evaluated to estimate interframe motion. A modified version of iterative least squares method is adopted to avoid estimation errors and features are tracked as they appear in nearby frames to improve video stability. Intentional camera motion is eventually filtered with adaptive motion vector integration. Results confirm the effectiveness of the method.
SIFT特征跟踪视频稳定
提出了一种基于视频帧尺度不变特征变换特征提取和跟踪的视频稳像算法。分析了SIFT算子的实现方法,并将其应用于基于特征的运动估计算法中。从视频帧中提取SIFT特征,然后对其轨迹进行评估,估计帧间运动。采用改进的迭代最小二乘法来避免估计误差,并在特征出现在附近帧时进行跟踪,提高视频稳定性。有意的相机运动最终通过自适应运动矢量集成进行过滤。结果证实了该方法的有效性。
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