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An Improved ORB Algorithm of Extracting Features Based on Local Region Adaptive Threshold

机译:基于局域自适应阈值的提取特征改进的ORB算法

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摘要

For the features extraction of image, an improved Oriented FAST and Rotated BRIEF (ORB) algorithm of extracting features based on local region adaptive threshold is proposed, which not only can it solve the problem that the traditional ORB feature extraction algorithm cannot adapt to the local brightness change of the image, but also solve the phenomenon that the extracted feature points exist clusters. Firstly, extracting local region adaptive threshold features on each pyramid image based on constructed an image pyramid. Then, the feature points are divided by the quad-tree algorithm and the direction and the descriptor of the feature points are calculated. After that, the Fast Library for Approximate Nearest Neighbors (FLANN) is used to the match feature points, the mismatch points are eliminated by Lowe's algorithm and rotation consistency. Finally, using the Random sample consensus (RANSAC) to get the fine matching image. The method proposed in this paper is carried out on the Oxford images. Experiments show that the proposed method can extract more stable feature points under different fuzzy, illumination and compression conditions, which improve the matching accuracy of feature points.
机译:对于图像的特征提取,提出了一种基于局域自适应阈值的提取的提取特征的改进的取向快速和旋转简要(ORB)算法,这不仅可以解决传统的ORB特征提取算法无法适应本地的问题图像的亮度变化,还解决了提取的特征点存在簇的现象。首先,基于构造的图像金字塔,提取每个金字塔图像上的局部区域自适应阈值特征。然后,将特征点除以Quad-Tree算法,并且计算特征点的方向和描述符。之后,用于近似最近邻居(Flann)的快速库用于匹配特征点,通过Lowe的算法和旋转一致性消除了不匹配点。最后,使用随机样本共识(Ransac)来获得精细匹配图像。本文提出的方法在牛津图像上进行。实验表明,该方法可以在不同的模糊,照明和压缩条件下提取更稳定的特征点,这提高了特征点的匹配精度。

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