Approximate distance estimation can be used to determine fundamental landscape properties including complexity and openness. We show that variations in the skyline of landscape photos can be used to estimate distances to trees on the horizon. A methodology based on the variations of the skyline has been developed and used to investigate potential relationships with the distance to skyline objects. The skyline signal, defined by the skyline height expressed in pixels, was extracted for several Land Use/Cover Area frame Survey (LUCAS) landscape photos. Photos were semantically segmented with DeepLabV3+ trained with the Common Objects in Context (COCO) dataset. This provided pixel-level classification of the objects forming the skyline. A Conditional Random Fields (CRF) algorithm was also applied to increase the details of the skyline signal. Three metrics, able to capture the skyline signal variations, were then considered for the analysis. These metrics shows a functional relationship with distance for the class of trees, whose contours have a fractal nature. In particular, regression analysis was performed against 475 ortho-photo based distance measurements, and, in the best case, a R2 score equal to 0.47 was achieved. This is an encouraging result which shows the potential of skyline variation metrics for inferring distance related information.
翻译:近距离估计可以用来确定基本的地貌特征,包括复杂性和开放性。我们显示,地貌照片的天线变化可以用来估计地平线上树木的距离。已经开发了基于天线变化的方法,并用于调查与天线天线天体距离之间的潜在关系。以像素表示的天线高度定义的天线信号,为若干土地利用/跨区域框架勘测(LUCAS)的地貌照片提取。照片与DeepLabV3+在环境内共同对象(COCO)数据集培训的DeepLabV3+进行了语义分割。这为形成天线的天线对象提供了像素等级的分类。还应用了一种适应性随机随机场算法来增加天线信号的细节。为若干土地利用/跨区域框架勘测(LUCAS)绘制了以像素表示的天线信号变化的三种尺度。这些尺度显示了与树类距离的功能关系,而树的轮廓具有分形性质。特别是,对形成天线的物体进行了回归分析,对形成天线的物体进行了平级或相等级分类的平分级分类。在距离测量上,以475或相平位图测量测量中,从而得出了以恒度的平的距离测量结果。在最大分度测量结果。