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针对AKAZE算法在无人机影像匹配过程中存在的匹配精度低和稳定性较差问题,本文提出一种基于多匹配策略融合的改进影像匹配方法。该方法首先对影像降采样并利用AKAZE算法检测多尺度特征。然后采用一种稳定的RootSIFT描述符进行特征描述。其次,融合最近邻距离比值、双向匹配和余弦相似度约束匹配策略进行特征匹配以降低误匹配率。最后,采用随机抽样一致性(RANSAC)算法确定最终的特征对应关系,并求得几何变换模型。实验结果表明,该方法在获得更多正确匹配点对的同时具有较高的匹配正确率和精度,能够更好适用于无人机影像匹配。 相似文献
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基于RFM的高分辨率卫星遥感影像自动匹配研究 总被引:5,自引:0,他引:5
摘 要:提出一种基于有理多项式模型(RFM)进行高分辨率卫星遥感影像自动匹配的方法。首先利用RFM进行高分辨率卫星影像直接定位和同名点预测;然后基于投影轨迹建立近似核线方程,并分析了核线精度;接着采用金字塔影像策略进行核线约束的近似一维影像匹配,并经最小二乘影像匹配精化匹配结果;最后采用RANSAC算法剔除误匹配点以获取最终的匹配结果。通过与二维灰度相关方法和SIFT匹配方法的比较试验,证明本文方法可靠性好、匹配成功率高,较好地解决了多时相、大姿态角高分辨率卫星遥感影像的自动匹配难题。 相似文献
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The extraction of object features from massive unstructured point clouds with different local densities, especially in the presence of random noisy points, is not a trivial task even if that feature is a planar surface. Segmentation is the most important step in the feature extraction process. In practice, most segmentation approaches use geometrical information to segment the 3D point cloud. The features generally include the position of each point (X, Y and Z), locally estimated surface normals and residuals of best fitting surfaces; however, these features could be affected by noisy points and in consequence directly affect the segmentation results. Therefore, massive unstructured and noisy point clouds also lead to bad segmentation (over-segmentation, under-segmentation or no segmentation). While the RANSAC (random sample consensus) algorithm is effective in the presence of noise and outliers, it has two significant disadvantages, namely, its efficiency and the fact that the plane detected by RANSAC may not necessarily belong to the same object surface; that is, spurious surfaces may appear, especially in the case of parallel-gradual planar surfaces such as stairs. The innovative idea proposed in this paper is a modification for the RANSAC algorithm called Seq-NV-RANSAC. This algorithm checks the normal vector (NV) between the existing point clouds and the hypothesised RANSAC plane, which is created by three random points, under an intuitive threshold value. After extracting the first plane, this process is repeated sequentially (Seq) and automatically, until no planar surfaces can be extracted from the remaining points under the existing threshold value. This prevents the extraction of spurious surfaces, brings an improvement in quality to the computed attributes and increases the degree of automation of surface extraction. Thus the best fit is achieved for the real existing surfaces. 相似文献
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针对基于仿射不变特征的遥感影像匹配技术,提出了一种自动优化方法,以进一步提高匹配准确性.根据典型需求形成了两套优化实施方案,基于所提出的自动优化方法实现了相应具体算法.针对不同类型的多组影像,自动优化的效果与相应方案的预定目标一致,充分证明了本方法的有效性与适用性. 相似文献
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采用RANSAC算法剔除观测数据中的离群值,再使用线性内插法进行补全,利用整体投影计算的思想提取两点间的相对重力值,并对其精度和标准差进行检验。结果表明,动态重力观测的残差最大值为4.641 μGal,重复性标准差最大值为4.384 μGal,均优于5 μGal。该方法可获得较高精度的重力观测数据,为在复杂环境下获取相对重力值提供一种新方法。 相似文献
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针对无人机在灾害区域应用时单张无人机影像往往无法覆盖整个受灾地区,而生成正射影像拼接又需要耗费大量时间的问题,对无人机视频全景拼接算法进行了研究,总结出一套快速生产巡检区域全景图像的流程和方法,并进行了实验验证。实验证明结果可靠,可达到准实时的速度,应对紧急情况的适应性强,可用于各种灾害区域的全景图像生产。 相似文献
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