Fast low-level multi-scale feature extraction for hexagonal images

S. Coleman, B. Scotney, B. Gardiner
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Abstract

Inspired by the human vision system and its capability to process in real-time, an efficient framework for low-level feature extraction on hexagonal pixel-based images is presented. This is achieved by utilizing the spiral architecture addressing scheme to simulate eye-tremor along with the convolution of non-overlapping gradient masks. Using sparse spiral convolution and the development of cluster operators, we obtain a set of output image responses “a-trous” that is subsequently collated into a consolidated output response; it is also demonstrated that this framework can be extended to feature extraction at different scales. We show that the proposed framework is considerably faster than using conventional spiral convolution or the use of look-up tables for direct access to hexagonal pixel neighbourhood addresses.
快速低阶六边形图像多尺度特征提取
受人类视觉系统及其实时处理能力的启发,提出了一种高效的六边形像素图像底层特征提取框架。这是通过利用螺旋结构寻址方案来模拟眼球震颤以及非重叠梯度掩模的卷积来实现的。利用稀疏螺旋卷积和聚类算子的发展,我们获得了一组输出图像响应“a-trous”,这些响应随后被整理成一个统一的输出响应;结果表明,该框架可以扩展到不同尺度的特征提取。我们表明,所提出的框架比使用传统的螺旋卷积或使用查找表直接访问六边形像素邻域地址要快得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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