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Standardization of the Shape of Ground Control Point (GCP) and the Methodology for Its Detection in Images for UAV-Based Mapping Applications

机译:地面控制点(GCP)形状的标准化及其在uAV基映射应用中的图像中检测的方法

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The challenge of georeferencing aerial images for an accurate object to image correspondence has gained significance over the past couple of years. There is an ever-increasing need to establish accurate georeferencing techniques for Unmanned Aerial Vehicles (UAVs) for tasks like aerial surveyance of mines/construction sites, change detection along national highways, inspection of major pipelines, intelligent farming, among others. With this paper, we aim to establish a standard method of georeferencing by proposing the design of a simple, white colored, L-shaped marker along with the pipeline for its detection. In a first, the less common DRGB color space is used along with the RGB color space to segment the characteristic white color of the marker. To carry out recognition, a scale and rotation invariant modification of the edge oriented histogram is used. To allow for accurate histograms, improvements are made on canny edge detection using adaptive approaches and exploiting contour properties. The histogram obtained displayed a characteristic distribution of peaks for GCP-markers. Thus, a new peak-detection and verification methodology is also proposed based on the normalized cross-correlation. Finally, a CNN model is trained on the Regions of Interest around the GCP-markers that are received after the filtering. The results from EOH and CNN were then used for classification. Regions with a diverse range of locality, terrain, soil quality were chosen to test the pipeline developed. The results of the design and the pipeline combined were quite impressive, with regards to the accuracy of detection as well as its reproducibility in diverse geographical locations.
机译:在过去的几年里,地理转移到图像对应的准确对象的挑战已经取得了重要意义。有不断增加的需要为矿山/建筑工地的航空检测等任务建立无人机(无人机)的准确地地理转移技术,如矿山/建筑工地的航空检测,沿着国家公路的检测,检查主要管道,智能农业等。借鉴了本文,我们的目的是通过提出简单,白色的L形标记的设计以及管道进行检测来建立地理学的标准方法。首先,使用较少的常见的DRGB颜色空间与RGB颜色空间一起使用,以分割标记的特征性白色。要执行识别,使用边缘导向直方图的刻度和旋转不变修改。为了允许准确的直方图,使用自适应方法和利用轮廓属性对Canny Edge检测进行改进。获得的直方图显示了GCP标记的峰的特征分布。因此,还基于标准化的互相关提出了一种新的峰值检测和验证方法。最后,在过滤之后接收的GCP标记的感兴趣区域培训CNN模型。然后使用EOH和CNN的结果进行分类。选择具有各种局部地位,地形,土壤质量的地区来测试生产的管道。关于检测的准确性以及各种地理位置的准确性,设计和管道组合的结果非常令人印象深刻。

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