Department of Electrical and Computer Engineering, University of Saskatchewan, Saskatoon, SK S7N 5A9, Canada.
Agriculture and Agri-Food Canada, Ottawa, ON K1A 0C5, Canada.
Sensors (Basel). 2018 Jun 8;18(6):1887. doi: 10.3390/s18061887.
To meet the high demand for supporting and accelerating progress in the breeding of novel traits, plant scientists and breeders have to measure a large number of plants and their characteristics accurately. Imaging methodologies are being deployed to acquire data for quantitative studies of complex traits. Images are not always good quality, in particular, they are obtained from the field. Image fusion techniques can be helpful for plant breeders with more comfortable access plant characteristics by improving the definition and resolution of color images. In this work, the multi-focus images were loaded and then the similarity of visual saliency, gradient, and color distortion were measured to obtain weight maps. The maps were refined by a modified guided filter before the images were reconstructed. Canola images were obtained by a custom built mobile platform for field phenotyping and were used for testing in public databases. The proposed method was also tested against the five common image fusion methods in terms of quality and speed. Experimental results show good re-constructed images subjectively and objectively performed by the proposed technique. The findings contribute to a new multi-focus image fusion that exhibits a competitive performance and outperforms some other state-of-the-art methods based on the visual saliency maps and gradient domain fast guided filter. The proposed fusing technique can be extended to other fields, such as remote sensing and medical image fusion applications.
为了满足对支持和加速新型性状培育的高需求,植物科学家和培育者必须准确测量大量植物及其特征。成像方法学被用于获取复杂性状定量研究的数据。图像质量并不总是很好,特别是它们是从野外获得的。图像融合技术可以通过提高彩色图像的清晰度和分辨率,帮助种植者更舒适地获取植物特征。在这项工作中,加载了多聚焦图像,然后测量视觉显着性、梯度和颜色失真的相似性,以获得权重图。在重建图像之前,通过修改后的导向滤波器对地图进行细化。油菜图像是通过定制的移动平台在野外表型获得的,并在公共数据库中进行了测试。该方法还针对五种常见的图像融合方法进行了质量和速度方面的测试。实验结果表明,所提出的技术在主观和客观上都能很好地重建图像。该研究结果为新的多聚焦图像融合提供了一种有竞争力的方法,基于视觉显着性图和梯度域快速导向滤波器,该方法优于一些其他的最先进方法。所提出的融合技术可以扩展到其他领域,如遥感和医学图像融合应用。