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Dual-Tree Complex Wavelet Transform and Image Block Residual-Based Multi-Focus Image Fusion in Visual Sensor Networks

机译:视觉传感器网络中的双树复数小波变换和基于图像块残差的多焦点图像融合

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摘要

This paper presents a novel framework for the fusion of multi-focus images explicitly designed for visual sensor network (VSN) environments. Multi-scale based fusion methods can often obtain fused images with good visual effect. However, because of the defects of the fusion rules, it is almost impossible to completely avoid the loss of useful information in the thus obtained fused images. The proposed fusion scheme can be divided into two processes: initial fusion and final fusion. The initial fusion is based on a dual-tree complex wavelet transform (DTCWT). The Sum-Modified-Laplacian (SML)-based visual contrast and SML are employed to fuse the low- and high-frequency coefficients, respectively, and an initial composited image is obtained. In the final fusion process, the image block residuals technique and consistency verification are used to detect the focusing areas and then a decision map is obtained. The map is used to guide how to achieve the final fused image. The performance of the proposed method was extensively tested on a number of multi-focus images, including no-referenced images, referenced images, and images with different noise levels. The experimental results clearly indicate that the proposed method outperformed various state-of-the-art fusion methods, in terms of both subjective and objective evaluations, and is more suitable for VSNs.
机译:本文提出了一种新颖的框架,用于为视觉传感器网络(VSN)环境明确设计的多焦点图像融合。基于多尺度的融合方法通常可以获得具有良好视觉效果的融合图像。然而,由于融合规则的缺陷,几乎不可能完全避免在如此获得的融合图像中有用信息的丢失。提出的融合方案可以分为两个过程:初始融合和最终融合。初始融合基于双树复数小波变换(DTCWT)。基于Sum-Modified Laplacian(SML)的视觉对比度和SML分别融合了低频系数和高频系数,从而获得了初始合成图像。在最终融合过程中,使用图像块残差技术和一致性验证来检测聚焦区域,然后获得决策图。该地图用于指导如何获得最终的融合图像。所提出方法的性能已在许多多焦点图像上进行了广泛测试,包括无参考图像,参考图像和具有不同噪声水平的图像。实验结果清楚地表明,在主观和客观评估方面,所提出的方法均优于各种最新的融合方法,并且更适用于VSN。

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