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An improved feature matching method base on gradient constraint

机译:一种基于梯度约束的改进特征匹配方法

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This article presents an improved feature matching method based on gradient constraint. SIFT is regarded as one of the most powerful features because of the conspicuous invariance of image rotation, noise and illumination. However, there will still be many mismatches when SIFT features are matched across images, especially when the amount of features is very large. In order to reduce the number of mismatches, we filter the initial matches based on the so-called gradient constraint, which requires the difference in dominant directors of corresponding features to be smaller than a threshold. The best threshold will be got by experience. Since the gradient of features can be obtained in the SIFT extraction process, no additional computation is involved and much time is saved. We then use RANSAC to remove false matches further based on the homography between two images. Experimental results indicate that our method is able to remove false matches effectively, and it is shown to be robust to noise.
机译:本文提出了一种基于梯度约束的改进特征匹配方法。 SIFT被认为是最强大的功能之一,因为图像旋转,噪声和照明的明显不变性。但是,当SIFT功能在图像之间匹配时,仍然存在许多不匹配的情况,尤其是当功能量很大时。为了减少不匹配的次数,我们基于所谓的梯度约束对初始匹配进行过滤,这要求相应特征的主导方向的差异小于阈值。最好的门槛将取决于经验。由于可以在SIFT提取过程中获得特征的梯度,因此无需进行任何额外的计算即可节省大量时间。然后,我们根据两个图像之间的单应性,使用RANSAC进一步消除错误匹配。实验结果表明,我们的方法能够有效地去除误匹配项,并且对噪声具有鲁棒性。

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