In current practice, scene survey is carried out by workers using total stations. The method has high accuracy, but it incurs high costs if continuous monitoring is needed. Techniques based on photogrammetry, with the relatively cheaper digital cameras, have gained wide applications in many fields. Besides point measurement, photogrammetry can also create a three-dimensional (3D) model of the scene. Accurate 3D model reconstruction depends on high quality images. Degraded images will result in large errors in the reconstructed 3D model. In this paper, we propose a method that can be used to improve the visibility of the images, and eventually reduce the errors of the 3D scene model. The idea is inspired by image dehazing. Each original image is first transformed into multiple exposure images by means of gamma-correction operations and adaptive histogram equalization. The transformed images are analyzed by the computation of the local binary patterns. The image is then enhanced, with each pixel generated from the set of transformed image pixels weighted by a function of the local pattern feature and image saturation. Performance evaluation has been performed on benchmark image dehazing datasets. Experimentations have been carried out on outdoor and indoor surveys. Our analysis finds that the method works on different types of degradation that exist in both outdoor and indoor images. When fed into the photogrammetry software, the enhanced images can reconstruct 3D scene models with sub-millimeter mean errors.
翻译:在目前实践中,现场勘测由使用总站点的工人进行。该方法具有很高的准确性,但如果需要持续监测,则其成本会很高。基于摄影测量的技术,以相对廉价的数字相机为基础,在许多领域获得了广泛的应用。除了点测量外,光测量还能够创建三维(3D)的场景模型。精确的 3D 模型重建取决于高品质图像。经过降格的图像将在重建的 3D 模型中造成很大的错误。在本文中,我们建议了一种方法,可以用来提高图像的可见度,并最终减少3D 场景模型的错误。这个方法受到图像脱色的启发。每个原始图像首先通过伽马校正操作和调整直方图均匀来转换成多个曝光图像。通过本地二进制模型的计算分析对变形图像进行了分析。通过本地模式的变形像像像像等素组合,通过本地模式特征特征特征和图像饱和饱和图度的功能,我们用图像脱色进行业绩评估,通过图像脱色的图像分析,在室内图像变色分析中进行了更深的模型分析。在室图像变形分析中发现,在室图像变形分析中进行了更深的变形分析,在室变形分析后,在室变形分析中发现了更形分析。