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An adaptive infrared image segmentation method based on fusion SPCNN

机译:基于融合SPCNN的自适应红外图像分割方法

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摘要

Inspired by multiple information processing mechanisms of the human nervous system, a fusion simplified pulse coupled neural network (FSPCNN) model for infrared (IR) image segmentation is proposed in this paper. In the method based on FSPCNN, the time decay factor is set adaptively based on Stevens' power law, and the synaptic weight is generated adaptively based on Lateral Inhibition (LI), without manual intervention. Meanwhile, according to Fast linking mechanism, the similarity between adjacent iteration results is used to implement the automatic selection of optimal segmentation result and control iteration. Experimental results indicate that the proposed method can satisfactorily segment targets from complex backgrounds, and it has favorable robustness and segmentation performance.
机译:灵感来自人类神经系统的多个信息处理机制,本文提出了一种用于红外(IR)图像分割的融合简化脉冲耦合神经网络(FSPCNN)模型。 在基于FSPCNN的方法中,基于史蒂文斯的权力法自适应地设定时间衰减因子,并且基于横向抑制(LI)自适应地生成突触权,而无需手动干预。 同时,根据快速链接机制,相邻迭代结果之间的相似性用于实现自动选择最佳分割结果和控制迭代。 实验结果表明,该方法可以令人满意地呈现复杂背景的段目标,具有良好的稳健性和分割性能。

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