Trujillo Leonardo, Olague Gustavo
Proyecto Evovisión, Departamento de Ciencias de la Computación, División de Física Aplicada, Centro de Investigación Científica y de Educación Superior de Ensenada, Km. 107 Carretera Tijuana-Ensenada, 22860, Ensenada, BC, México.
Evol Comput. 2008 Winter;16(4):483-507. doi: 10.1162/evco.2008.16.4.483.
This work describes how evolutionary computation can be used to synthesize low-level image operators that detect interesting points on digital images. Interest point detection is an essential part of many modern computer vision systems that solve tasks such as object recognition, stereo correspondence, and image indexing, to name but a few. The design of the specialized operators is posed as an optimization/search problem that is solved with genetic programming (GP), a strategy still mostly unexplored by the computer vision community. The proposed approach automatically synthesizes operators that are competitive with state-of-the-art designs, taking into account an operator's geometric stability and the global separability of detected points during fitness evaluation. The GP search space is defined using simple primitive operations that are commonly found in point detectors proposed by the vision community. The experiments described in this paper extend previous results (Trujillo and Olague, 2006a,b) by presenting 15 new operators that were synthesized through the GP-based search. Some of the synthesized operators can be regarded as improved manmade designs because they employ well-known image processing techniques and achieve highly competitive performance. On the other hand, since the GP search also generates what can be considered as unconventional operators for point detection, these results provide a new perspective to feature extraction research.
这项工作描述了如何使用进化计算来合成用于检测数字图像上兴趣点的低级图像算子。兴趣点检测是许多现代计算机视觉系统的重要组成部分,这些系统可解决诸如目标识别、立体匹配和图像索引等任务,仅举几例。专用算子的设计被视为一个优化/搜索问题,通过遗传编程(GP)来解决,而计算机视觉社区对这一策略的探索仍大多不足。所提出的方法在适应度评估期间考虑算子的几何稳定性和检测点的全局可分离性,自动合成与最先进设计具有竞争力的算子。GP搜索空间是使用视觉社区提出的点检测器中常见的简单基本操作来定义的。本文所述实验扩展了先前的结果(Trujillo和Olague,2006a,b),展示了通过基于GP的搜索合成的15个新算子。一些合成算子可被视为改进的人工设计,因为它们采用了知名的图像处理技术并实现了极具竞争力的性能。另一方面,由于GP搜索还生成了可被视为用于点检测的非常规算子,这些结果为特征提取研究提供了新的视角。