基于线段的异构图像旋转不变量描述符

Teena Sharma, P. Agrawal, Piyush Sahoo, N. Verma, S. Vasikarla
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引用次数: 0

摘要

由于图像的差异,基于计算机视觉的实时应用需要鲁棒的图像匹配方法。这可以使用具有缩放和旋转不变性能力的描述子向量来实现。提出了一种基于线点对偶的旋转不变描述子向量生成方法。所提出的描述符使用一种简单一致的关键点检测方法。为了获得描述符向量,使用输入图像中存在的线段。这些线段位于输入图像中获得的关键点周围的感兴趣区域内。得到的描述符向量用于不同图像的匹配。在四个不同的图像集上进行了不同角度的旋转实验,以验证所提出的描述符的实时性能。为了进行对比研究,采用两隐层多层神经网络计算归一化匹配比。
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Line Segments based Rotation Invariant Descriptor for Disparate Images
Computer vision-based real-time applications demand robust image matching approaches due to disparity in images. This can be achieved using descriptor vector with scale and rotation invariance capability. This paper presents a rotation invariant descriptor vector formation based on line point duality. The proposed descriptor uses a simple consistent method of key point detection. For obtaining the descriptor vector, line segments present in the input image are used. These line segments are located within a region of interest around obtained key points in the input image. The obtained descriptor vector is used for matching of disparate images. Experiments are carried out for four different image sets with rotation at the range of angles to validate the performance of the proposed descriptor in real-time. For comparative study, normalized match ratio is computed using multi-layered neural network with two hidden layers.
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