基于多尺度局部颜色不变量的视频稳定

Kang Feng, Han Yonghua, Zhang Hua-xiong
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引用次数: 2

摘要

特征提取与匹配是运动估计的关键环节,在很大程度上决定了视频防抖的性能。提出了一种基于多尺度彩色局部不变性特征的视频稳像方法。该方法将图像从RGB颜色模型转换为颜色不变性模型,并基于高斯金字塔建立多尺度颜色不变性空间,然后在多尺度空间中提取FAST特征点,通过构建FAST视网膜关键点(FREAK)描述子对特征点进行匹配,最后利用m -估计样本一致性(MSAC)算法估计视频中的帧间运动,并对图像进行补偿和平滑处理。实验表明,该方法具有较好的鲁棒性,特别是在恶劣的成像条件下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Video Stabilization Based on Multi-scale Local Color Invariants
Feature extraction and matching is the key process of motion estimation, and determines the performance of video stabilization to a great extent. A novel approach of video stabilization was proposed based on multi-scale colored local invariant features. The proposed approach transformed the image from RGB color model to color invariant model, and built up multi-scale color invariant space based on Gaussian pyramids, then extracted FAST feature points in the multiscale space and matched the feature points by building Fast Retina Key-point (FREAK) descriptors, finally estimated interframe motions in the video by M-estimator Sample Consensus (MSAC) algorithm, and processed image compensation and smoothing. Experiments demonstrated that the approach was efficient and more robust than general methods especial in harsh imaging conditions.
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