摘要
为了利用模糊集理论进行图像分割,本文提出了一种模糊度测度函数,它衡量了背景模糊集和某一个二值图像的相似性:模糊度越小,这种相似程度越大;并且对模糊度的计算只需要进行简单的比较运算和加法运算,便于硬件实现。本文利用遗传算法求取最佳阈值,针对遗传算法的某些不足之处.我们利用精英策略和模拟退火的思想,对其做了一些修正。实验结果表明:相对于Shannon熵方法和模糊熵方法,本文方法取得了较好的分割结果,并且具有较强的抗噪声能力。
To segment images with fuzzy set theory, we proposed a fuzziness measure, which measures the similarity of a gray image and a binary image, the less this measure, the more similar the gray image and the binary image. It only needs compare and addition operations to compute this fuzziness measure, and this character makes it convenient to be implemented by hardware. We used genetic algorithm (GA) to obtain the best threshold. To overcome some limitations of GA, we amended the standard GA with elite strategy and the thought of simulated annealing. The experimental results indicate that our method can obtain better results compared with the Shannon entropy method and fuzzy entropy method, and our method is more robust to noise.
出处
《信号处理》
CSCD
2003年第1期15-18,共4页
Journal of Signal Processing