Integration of Bi-dimensional Empirical Mode Decomposition With Two Streams Deep Learning Network for Infrared and Visible Image Fusion

Manoj K. Panda, B. Subudhi, T. Veerakumar, V. Jakhetiya
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Abstract

Image fusion is a technique that combines the complementary details from the images captured from different sensors into a single image with high perception capability. In the fusion process, the significant details from different source images are combined in a meaningful way. In this article, we propose a unique and first effort of infrared and visible image fusion technique with bi-dimensional empirical mode decomposition (BEMD) induced VGG-16 deep neural network. The proposed BEMD strategy is incorporated with a pre-trained VGG-16 network that can effectively handle the vagueness of infrared and visible images and retain deep multi-layer features at different scales on the frequency domain. A novel fusion strategy is proposed here to analyze the spatial inter-dependency between these features and precisely preserve the correlative information from the source images. The minimum selection strategy is explored in the proposed algorithm to keep the standard details with reduced artifacts in the fused image. The competency of the proposed algorithm is estimated using qualitative and quantitative assessments. The efficiency of the proposed technique is corroborated against fifteen existing state-of-the-art fusion techniques and found to be efficient.
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基于双流深度学习网络的二维经验模态分解红外与可见光图像融合
图像融合是一种将从不同传感器捕获的图像中互补的细节组合成具有高感知能力的单一图像的技术。在融合过程中,将不同源图像的重要细节以有意义的方式结合起来。在本文中,我们首次提出了一种独特的基于二维经验模态分解(BEMD)诱导的VGG-16深度神经网络的红外和可见光图像融合技术。提出的BEMD策略与预训练的VGG-16网络相结合,可以有效地处理红外和可见光图像的模糊性,并在频域上保留不同尺度的深层多层特征。本文提出了一种新的融合策略来分析这些特征之间的空间依赖关系,并精确地保留源图像中的相关信息。该算法探索了最小选择策略,在保留标准细节的同时减少了融合图像中的伪影。所提出的算法的能力是使用定性和定量评估估计。所提出的技术的效率与现有的15种最先进的融合技术相印证,发现是有效的。
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