不同不规则程度的距离图像特征提取

S. Suganthan, S. Coleman, B. Scotney
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引用次数: 3

摘要

距离图像的使用在计算机视觉领域已经成为一个突出的问题。由于许多传感器的距离图像数据具有不规则性,因此距离图像的边缘检测技术通常基于扫描线数据近似值,因此不使用精确的数据位置。我们提出了一种基于有限元的方法来开发梯度算子,可以应用于规则和不规则分布的距离图像。我们为每种边缘类型创建了合成的不规则分布范围图像,并且评估了开发的梯度算子在不同数据不规则程度的边缘检测中的性能。
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Range Image Feature Extraction with Varying Degrees of Data Irregularity
The use of range images has become prominent in the field of computer vision. Due to the irregular nature of range image data that occurs with a number of sensors, edge detection techniques for range images are often based on scan line data approximations and hence do not employ exact data locations. We present a finite element based approach to the development of gradient operators that can be applied to both regularly and irregularly distributed range images. We have created synthetic irregularly distributed range images for each edge type, and the gradient operators developed are evaluated with respect to their performance in edge detection across varying levels of data irregularity.
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