Artificial Intelligence (AI) – based strategies for point cloud data and digital twins

Nova Geodesia Pub Date : 2023-08-19 DOI:10.55779/ng33138
Ifra Aftab, Mohammad Dowajy, K. Kapitany, Tamas Lovas
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Abstract

Artificial Intelligence (AI), specifically machine learning (ML) and deep learning (DL), is causing a paradigm shift in coding practices and software solutions across diverse fields. This study focuses on harnessing the potential of ML/DL strategies in the geospatial domain, where geodata possesses characteristics that align with the concept of a “lingual manuscript” in aesthetic theory. By employing ML/DL techniques, such as feature evaluation and extraction from 3D point clouds, we can derive concepts that are specific to software, geographical areas, and tasks. ML/DL-based interpretation of 3D point clouds extends geospatial modelling beyond implicit representations, enabling the resolution of complex heuristic-based reconstructions and abstract concepts. These advancements in artificial intelligence have the potential to optimize and expedite geodata computation and geographic information systems. However, ML/DL encounters notable challenges in this domain, including the need for abundant training data, advanced statistical methods, and the development of effective feature representations. Overcoming these challenges is essential to enhance the performance and efficacy of ML/DL systems. Additionally, ML/DL-based solutions can simplify software engineering processes by replacing certain aspects of current adoption and implementation practices, resulting in reduced complexities in development and management. Through the adoption of ML/DL, many of the existing explicitly coded GIS implementations may gradually be replaced in the long term. Overall, this research illustrates the transformative capabilities of ML/DL in geospatial applications and underscores the significance of addressing associated challenges to drive further advancements in the field.
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基于人工智能(AI)的点云数据和数字孪生策略
人工智能(AI),特别是机器学习(ML)和深度学习(DL),正在引起不同领域编码实践和软件解决方案的范式转变。本研究的重点是利用ML/DL策略在地理空间领域的潜力,其中地理数据具有与美学理论中的“语言手稿”概念一致的特征。通过使用ML/DL技术,例如特征评估和从3D点云提取,我们可以导出特定于软件、地理区域和任务的概念。基于ML/ dl的3D点云解释将地理空间建模扩展到隐式表示之外,使基于启发式的复杂重建和抽象概念得以解决。人工智能的这些进步有可能优化和加速地理数据计算和地理信息系统。然而,ML/DL在这个领域遇到了显著的挑战,包括需要丰富的训练数据、先进的统计方法和开发有效的特征表示。克服这些挑战对于提高ML/DL系统的性能和效率至关重要。此外,基于ML/ dl的解决方案可以通过取代当前采用和实现实践的某些方面来简化软件工程过程,从而降低开发和管理的复杂性。通过采用ML/DL,从长远来看,许多现有的显式编码GIS实现可能会逐渐被取代。总的来说,这项研究说明了ML/DL在地理空间应用中的变革性能力,并强调了解决相关挑战以推动该领域进一步发展的重要性。
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