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Self-adaptive hybrid PSO-GA method for change detection under varying contrast conditions in satellite images

机译:改变卫星图像不同对比条件下的改变检测的自适应混合PSO-GA方法

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This paper proposes a new unsupervised satellite change detection method, which is robust to illumination changes. To achieve this, firstly, a preprocessing strategy is used to remove illumination artifacts and results in less false detection than traditional threshold-based algorithms. Then, we use the corrected input data to define a new fitness function based on the difference image. The purpose of using Self-Adaptive Hybrid Particle Swarm Optimization-Genetic Algorithm (SAPSOGA) is to combine two meta-heuristic optimization algorithms to search and find the feasible solution in the NP-hard change detection problem rapidly and efficiently. The hybrid algorithm is employed by letting the GA and PSO run simultaneously and similarities of GA and PSO have been considered to implement the algorithm, i.e. the population. In the SAPSOGA employed, in each iteration/generation the two population based algorithms share different amount of information or individual(s) between themselves. Thus, each algorithm informs each other about their best optimum results (fitness values and solution representations) which are obtained in their own population. The fitness function is minimized by using binary based SAPSOGA approach to produce binary change detection masks in each iteration to obtain the optimal change detection mask between two multi temporal multi spectral landsat images. The proposed approach effectively optimizes the change detection problem and finds the final change detection mask.
机译:本文提出了一种新的无监督卫星改变检测方法,这对照明变化具有鲁棒性。为了实现这一点,首先,使用预处理策略来除去照明伪像并导致比传统的基于阈值的算法更少的错误检测。然后,我们使用校正的输入数据根据差异图像来定义新的健身功能。使用自适应混合粒子群优化遗传算法(SASAPSoga)的目的是将两个元启发式优化算法组合在一起,快速有效地在NP-HARD变化检测问题中进行搜索和找到可行的解决方案。通过使GA和PSO同时运行和PA和PSO的相似性来采用混合算法,已经考虑实施算法,即人口。在所采用的Sapsoga中,在每次迭代/生成中,两种基于群体的算法在它们之间共享不同的信息量或个体。因此,每个算法互相通知其在其自身群体中获得的最佳最佳结果(适应值和解决方案表示)。通过使用基于二进制的SASGA方法在每次迭代中产生二进制变化检测掩模来最小化健康功能,以获得两个多时间多光谱覆盖图像之间的最佳变化检测掩码。所提出的方法有效地优化了变化检测问题,找到了最终变化检测掩模。

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