计算机科学
可扩展性
人工智能
二进制数
不变(物理)
数学
算术
数据库
数学物理
作者
Stefan Leutenegger,Margarita Chli,Roland Siegwart
出处
期刊:International Conference on Computer Vision
日期:2011-11-01
卷期号:: 2548-2555
被引量:3210
标识
DOI:10.1109/iccv.2011.6126542
摘要
Effective and efficient generation of keypoints from an image is a well-studied problem in the literature and forms the basis of numerous Computer Vision applications. Established leaders in the field are the SIFT and SURF algorithms which exhibit great performance under a variety of image transformations, with SURF in particular considered as the most computationally efficient amongst the high-performance methods to date. In this paper we propose BRISK 1 , a novel method for keypoint detection, description and matching. A comprehensive evaluation on benchmark datasets reveals BRISK's adaptive, high quality performance as in state-of-the-art algorithms, albeit at a dramatically lower computational cost (an order of magnitude faster than SURF in cases). The key to speed lies in the application of a novel scale-space FAST-based detector in combination with the assembly of a bit-string descriptor from intensity comparisons retrieved by dedicated sampling of each keypoint neighborhood.
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