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A novel multi-focus image fusion method for improving imaging systems by using cascade-forest model

机译:一种新型多聚焦图像融合方法,用于使用级联林模型改进成像系统

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Image fusion technology combines information from different source images of the same target and performs extremely effective information complementation, which is widely used for the transportation field, medicine field, and surveillance field. Specifically, due to the limitation of depth of field in imaging device, images cannot focus on all objects and miss partial details. To deal with this problem, an effective multi-focus image fusion method is proposed in this paper. We interpret the production of the focus map as a two-class classification task and solve this problem by using a method based on the cascade-forest model. Firstly, we extract the specific features from overlapping patches to represent the clarity level of source images. To obtain the focus map, feature vectors are fed into the pre-trained cascade-forest model. Then, we utilize consistency check to acquire the initial decision map. Afterward, guided image filtering is used for edge-reservation to refine the decision map. Finally, the result is obtained through pixel-wise weighted average strategy. Extensive experiments demonstrate that the proposed method achieves outstanding visual performance and excellent objective indicators.
机译:图像融合技术将来自相同目标的不同源图像的信息组合并执行极其有效的信息互补,广泛用于运输领域,医学领域和监视领域。具体地,由于成像装置中的场景的景深的限制,图像不能专注于所有对象和小组细节。为了解决这个问题,本文提出了一种有效的多聚焦图像融合方法。我们将焦点地图的生产解释为两级分类任务,并通过使用基于级联林模型的方法来解决此问题。首先,我们从重叠补丁中提取特定功能以表示源图像的清晰度水平。为了获得焦点图,特征向量被送入预先培训的级联林模型。然后,我们利用一致性检查以获取初始决策地图。之后,引导图像滤波用于边缘预留以优化决策图。最后,通过像素 - 方向加权平均策略获得结果。广泛的实验表明,该方法达到了出色的视觉性能和优秀的客观指标。

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