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A Regenerated Feature Extraction Method for Cross-modal Image Registration

机译:跨模态图像配准的再生特征提取方法

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Cross-modal image registration is an intractable problem in computer vision and pattern recognition. Inspired by that human gradually deepen to learn in the cognitive process, we present a novel method to automatically register images with different modes in this paper. Unlike most existing registrations that align images by single type of features or directly using multiple features, we employ the "regenerated" mechanism cooperated with a dynamic routing to adaptively detect features and match for different modal images. The geometry-based maximally stable extremal regions (MSER) are first implemented to fast detect non-overlapping regions as the primitive of feature regeneration, which are used to generate novel control-points using salient image disks (SIDs) operator embedded by a sub-pixel iteration. Then a dynamic routing is proposed to select suitable features and match images. Experimental results on optical and multi-sensor images show that our method has a better accuracy compared to state-of-the-art approaches.
机译:跨模式图像配准是计算机视觉和模式识别中的一个棘手问题。受人类逐渐加深学习认知过程的启发,本文提出了一种新颖的自动注册具有不同模式的图像的方法。与大多数现有的通过单一类型的特征或直接使用多个特征对齐图像的配准不同,我们采用“再生”机制与动态路由配合来自适应地检测特征并匹配不同的模态图像。首先实现基于几何的最大稳定极值区域(MSER),以快速检测不重叠的区域作为特征再生的基元,这些区域用于使用由子图像嵌入的显着图像磁盘(SID)运算符生成新颖的控制点。像素迭代。然后提出了动态路由选择合适的特征并匹配图像。在光学和多传感器图像上的实验结果表明,与最新方法相比,我们的方法具有更好的准确性。

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