首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >SEMI-AUTOMATIC APPROACH FOR OPTICAL AND LIDAR DATA INTEGRATION USING PHASE CONGRUENCY MODEL AT MULTIPLE RESOLUTIONS
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SEMI-AUTOMATIC APPROACH FOR OPTICAL AND LIDAR DATA INTEGRATION USING PHASE CONGRUENCY MODEL AT MULTIPLE RESOLUTIONS

机译:多分辨率使用相变模型的光学和激光雷达数据集成的半自动方法

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In light of the ongoing urban sprawl reported in recent studies, accurate urban mapping is essential for assessing current status and evolve new policies, to overcome various social, environmental, and economic consequence. Imagery and LiDAR data integration densifies remotely sensed data with radiometric and geometric characteristics, respectively, for a precise segregation of different urban features. This study integrated aerial and LiDAR images using point primitives, which were obtained from running the Phase Congruency model as an image filter to detect edges and corner. The main objective is to study the effect of applying the filter at different spatial resolutions on the registration accuracy and processing time. The detected edge/corner points that are mutual in both datasets, were identified as candidate points. The Shape Context Descriptor method paired-up candidate points as final points based on a minimum correlation of 95%. Affine, second and third order polynomials, in addition to the Direct Linear Transformation models were applied for the image registration process using the two sets of final points. The models were solved using Least Squares adjustments, and validated by a set of 55 checkpoints. It was observed that with the decrease in spatial resolution, on one hand, the registration accuracy did not significantly vary. However, the consistency of the model development and model validation accuracies were enhanced, especially with the third order polynomial model. On the other hand, the number of candidate points decreased; consequently, the processing time significantly declined. The 3D LiDAR points were visualised based on the Red, Green, and Blue radiometric values that were inherited from the aerial photo. The qualitative inspection was very satisfactory, especially when examining the scene’s tiny details. In spite of the interactivity in determining the candidate points, the proposed procedure overcomes the dissimilarity between datasets in terms of acquisition technique and time, and widens the tolerance of accepting points as candidates by including points that are not traditionally considered (i.e. road intersections).
机译:鉴于最近的研究报告的持续城市蔓延,准确的城市映射对于评估现状和发展新政策至关重要,以克服各种社会,环境和经济后果。图像和LIDAR数据集成分别将远程感测数据致密,分别具有辐射和几何特性,以获得不同城市特征的精确隔离。这项研究了使用点基元的集成空中和激光雷达图像,从运行相偶模型作为图像滤波器来检测边缘和角。主要目的是研究将过滤器应用于不同空间分辨率的效果对注册准确性和处理时间。在两个数据集中相互在两个数据集中被识别为候选点的检测到的边缘/角点。形状上下文描述符方法将候选点作为最终点基于95%的最小相关性。除了使用两组最终点应用于图像配准过程之外,除了直接线性变换模型之外,牵引力,第二和三阶多项式。使用最小二乘调整解决模型,并通过一组55个检查点进行验证。观察到,随着空间分辨率的降低,一方面,登记精度没有显着变化。然而,模型开发和模型验证精度的一致性得到了增强,特别是三阶多项式模型。另一方面,候选点数减少;因此,处理时间显着下降。基于从空中照片遗传的红色,绿色和蓝色辐射值来可视化3D LIDAR点。定性检查非常令人满意,特别是在检查现场的微小细节时。尽管在确定候选点时的相互作用,所提出的程序克服了在收购技术和时间方面的数据集之间的不相似性,并通过包括不传统上被认为的积分(即道路交叉路口)作为候选人的接受点的容忍度。

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