用于拓扑活动网优化的快速微差分进化

Fast Micro-Differential Evolution for Topological Active Net Optimization

IEEE Transactions on Cybernetics · 2015
被引 27
ABS 3

中文导读

提出用微差分进化替代确定性搜索,改进拓扑活动网优化中的局部搜索算法,实验表明新算法在速度和解质量上优于传统方法。

Abstract

This paper studies the optimization problem of topological active net (TAN), which is often seen in image segmentation and shape modeling. A TAN is a topological structure containing many nodes, whose positions must be optimized while a predefined topology needs to be maintained. TAN optimization is often time-consuming and even constructing a single solution is hard to do. Such a problem is usually approached by a "best improvement local search" (BILS) algorithm based on deterministic search (DS), which is inefficient because it spends too much efforts in nonpromising probing. In this paper, we propose the use of micro-differential evolution (DE) to replace DS in BILS for improved directional guidance. The resultant algorithm is termed deBILS. Its micro-population efficiently utilizes historical information for potentially promising search directions and hence improves efficiency in probing. Results show that deBILS can probe promising neighborhoods for each node of a TAN. Experimental tests verify that deBILS offers substantially higher search speed and solution quality not only than ordinary BILS, but also the genetic algorithm and scatter search algorithm.

图像分割形状建模差分进化局部搜索拓扑优化