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Aerial Image Stitching Algorithm Based on Improved GMS

机译:基于改进GMS的空中图像拼接算法

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Feature matching is of great importance in the keypoint-based image stitching. Grid-based Motion Statistics (GMS) is a fast and ultra-robust image feature matching algorithm. However the correct matching rate and registration precision of GMS are relatively low. In order to obtain accurate aerial stitching images while ensuring high matching speed, an aerial image mosaic algorithm based on improved GMS is proposed in this paper. Firstly, we apply the ORB algorithm to extract and describe the feature points of the image. Then, GMS-based bidirectional matching is used to acquire the initial matching points. After that, false matches are rejected by constructing epipolar constraint. Finally, we use Random Sample Consensus Algorithm (RANSAC) to calculate the transformation model and fuse the aligning images by weighted average fusion algorithm. Experimental results show that the proposed algorithm has good matching accuracy and registration accuracy while maintaining a low matching time.
机译:特征匹配在基于KeyPoint的图像拼接中非常重要。基于网格的运动统计(GMS)是一种快速和超强的图像特征匹配算法。然而,GMS的正确匹配速率和注册精度相对较低。为了在确保高匹配速度的同时获得精确的空中缝合图像,本文提出了一种基于改进的GMS的空中图像拼接算法。首先,我们应用ORB算法来提取并描述图像的特征点。然后,基于GMS的双向匹配用于获取初始匹配点。之后,通过构建eMipolar约束来拒绝假匹配。最后,我们使用随机样本共识算法(RANSAC)来计算转换模型并通过加权平均融合算法融合对准图像。实验结果表明,该算法具有良好的匹配精度和登记精度,同时保持低匹配时间。

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