改进的 ORB-GMS 图像特征提取和匹配算法*

Zhiying Tan, Wenbo Fan, Weifeng Kong, Xu Tao, Linsen Xu, Xiaobin Xu
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引用次数: 0

摘要

特征点提取与匹配是物体检测和同步定位与映射(SLAM)的关键技术。针对传统 ORB 算法提取的特征点易冗余、主流鲁棒估计算法匹配精度低、实时性差等问题,提出了一种改进的 ORB-GMS 图像特征提取与匹配算法。首先,该算法利用图像的灰度值计算特征点的自适应提取阈值。然后根据图像大小构建图像金字塔。根据面积比将设定的总特征点数平均分配到各层图像中;从图像金字塔的各层提取特征点,并统计各层提取的特征点数。如果每层提取的特征点数量达到设定的每层图像数量,则提取结束。然后使用四叉树算法对特征点进行均匀化处理。最后,网络评分模型从 8 个邻域优化为 4 个邻域,从而减少了计算时间。实验结果表明,建议算法的匹配准确率比原始算法高 14%,运行时间减少 12%。
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An improved ORB-GMS image feature extraction and matching algorithm*
Feature point extraction and matching is the key technology in object detection and simultaneous localization and mapping (SLAM). Aiming at the problems such as easy redundancy of feature points extracted by traditional ORB algorithm, low matching accuracy of mainstream robust estimation algorithms and low real-time performance, an improved ORB-GMS image feature extraction and matching algorithm is proposed. Firstly, the algorithm uses the gray value of the image to calculate the adaptive extraction threshold of the feature points. Then the image pyramid is constructed according to the image size. The set number of total feature points to be extracted is evenly distributed to each layer image according to the area ratio; Extract feature points from each layer of the image pyramid, and count the extracted feature points from each layer. If the number of feature points extracted from each layer meets the set number of images from each layer, the extraction ends. Then the quadtree algorithm is used to homogenize the feature points. Finally, the network scoring model is optimized from 8 neighborhood to 4 neighborhood, which reduces the computing time. Experimental results show that the matching accuracy of the proposed algorithm is 14% higher than that of the original algorithm, and the running time is 12% lower.
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