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基于参数自适应双通道动态闽值神经 P 系统的多聚焦图像融合。

Multi-focus image fusion with parameter adaptive dual channel dynamic threshold neural P systems.

机构信息

School of Computer Science and Technology, Xi'an Jiaotong University, Xi'an, Shaanxi, 710049, China; Ministry of Education Key Laboratory of Intelligent Networks and Network Security, Xi'an Jiaotong University, Xi'an, 710049, China.

School of Computer Science and Technology, Xi'an Jiaotong University, Xi'an, Shaanxi, 710049, China; Ministry of Education Key Laboratory of Intelligent Networks and Network Security, Xi'an Jiaotong University, Xi'an, 710049, China.

出版信息

Neural Netw. 2024 Nov;179:106603. doi: 10.1016/j.neunet.2024.106603. Epub 2024 Aug 8.

Abstract

Multi-focus image fusion (MFIF) is an important technique that aims to combine the focused regions of multiple source images into a fully clear image. Decision-map methods are widely used in MFIF to maximize the preservation of information from the source images. While many decision-map methods have been proposed, they often struggle with difficulties in determining focus and non-focus boundaries, further affecting the quality of the fused images. Dynamic threshold neural P (DTNP) systems are computational models inspired by biological spiking neurons, featuring dynamic threshold and spiking mechanisms to better distinguish focused and unfocused regions for decision map generation. However, original DTNP systems require manual parameter configuration and have only one stimulus. Therefore, they are not suitable to be used directly for generating high-precision decision maps. To overcome these limitations, we propose a variant called parameter adaptive dual channel DTNP (PADCDTNP) systems. Inspired by the spiking mechanisms of PADCDTNP systems, we further develop a new MFIF method. As a new neural model, PADCDTNP systems adaptively estimate parameters according to multiple external inputs to produce decision maps with robust boundaries, resulting in high-quality fusion results. Comprehensive experiments on the Lytro/MFFW/MFI-WHU dataset show that our method achieves advanced performance and yields comparable results to the fourteen representative MFIF methods. In addition, compared to the standard DTNP systems, PADCDTNP systems improve the fusion performance and fusion efficiency on the three datasets by 5.69% and 86.03%, respectively. The codes for both the proposed method and the comparison methods are released at https://github.com/MorvanLi/MFIF-PADCDTNP.

摘要

多聚焦图像融合 (MFIF) 是一种重要的技术,旨在将多个源图像的聚焦区域合并为一幅完全清晰的图像。决策图方法广泛应用于 MFIF 中,以最大限度地保留源图像的信息。虽然已经提出了许多决策图方法,但它们往往难以确定焦点和非焦点边界,从而进一步影响融合图像的质量。动态阈值神经 P (DTNP) 系统是受生物尖峰神经元启发的计算模型,具有动态阈值和尖峰机制,可更好地区分聚焦和非聚焦区域,以生成决策图。然而,原始的 DTNP 系统需要手动参数配置,并且只有一个刺激。因此,它们不适合直接用于生成高精度的决策图。为了克服这些限制,我们提出了一种称为参数自适应双通道 DTNP (PADCDTNP) 系统的变体。受 PADCDTNP 系统的尖峰机制启发,我们进一步开发了一种新的 MFIF 方法。作为一种新的神经模型,PADCDTNP 系统根据多个外部输入自适应地估计参数,以生成具有稳健边界的决策图,从而产生高质量的融合结果。在 Lytro/MFFW/MFI-WHU 数据集上的综合实验表明,我们的方法取得了先进的性能,与 14 种代表性的 MFIF 方法的结果相当。此外,与标准 DTNP 系统相比,PADCDTNP 系统在三个数据集上分别提高了 5.69%和 86.03%的融合性能和融合效率。所提出的方法和比较方法的代码都在 https://github.com/MorvanLi/MFIF-PADCDTNP 上发布。

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