Adaptive Algorithms for Intelligent Geometric A Computing

M. Gavrilova
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引用次数: 9

Abstract

This chapter spans topics from such important areas as Artificial Intelligence, Computational Geometry and Biometric Technologies. The primary focus is on the proposed Adaptive Computation Paradigm and its applications to surface modeling and biometric processing. Availability of much more affordable storage and high resolution image capturing devices have contributed significantly over the past few years to accumulating very large datasets of collected data (such as GIS maps, biometric samples, videos etc.). On the other hand, it also created significant challenges driven by the higher than ever volumes and the complexity of the data, that can no longer be resolved through acquisition of more memory, faster processors or optimization of existing algorithms. These developments justified the need for radically new concepts for massive data storage, processing and visualization. To address this need, the current chapter presents the original methodology based on the paradigm of the Adaptive Geometric Computing. The methodology enables storing complex data in a compact form, providing efficient access to it, preserving high level of details and visualizing dynamic changes in a smooth and continuous manner. The first part of the chapter discusses adaptive algorithms in real-time visualization, specifically in GIS (Geographic Information Systems) applications. Data structures such as Real-time Optimally Adaptive Mesh (ROAM) and Progressive Mesh (PM) are briefly surveyed. The adaptive method Adaptive Spatial Memory (ASM), developed by R. Apu and M. Gavrilova, is then introduced. This method allows fast and efficient visualization of complex data sets representing terrains, landscapes and Digital Elevation Models (DEM). Its advantages are briefly discussed. The second part of the chapter presents application of adaptive computation paradigm and evolutionary computing to missile simulation. As a result, patterns of complex behavior can be developed and analyzed. The final part of the chapter marries a concept of adaptive computation and topology-based techniques and discusses their application to challenging area of biometric computing.
智能几何A计算的自适应算法
本章涵盖了人工智能、计算几何和生物识别技术等重要领域的主题。主要重点是提出的自适应计算范式及其在表面建模和生物特征处理中的应用。在过去的几年中,更实惠的存储和高分辨率图像捕获设备的可用性为积累非常大的收集数据集(如GIS地图,生物识别样本,视频等)做出了重大贡献。另一方面,它也带来了前所未有的数据量和复杂性带来的重大挑战,这些挑战不再能够通过获取更多内存、更快的处理器或优化现有算法来解决。这些发展证明了对海量数据存储、处理和可视化的全新概念的需求。为了满足这一需求,本章介绍了基于自适应几何计算范式的原始方法。该方法能够以紧凑的形式存储复杂的数据,提供有效的访问,保留高水平的细节,并以平滑和连续的方式可视化动态变化。本章的第一部分讨论了实时可视化中的自适应算法,特别是在GIS(地理信息系统)应用中。简要介绍了实时最优自适应网格(ROAM)和渐进式网格(PM)等数据结构。然后介绍了R. Apu和M. Gavrilova提出的自适应空间记忆(ASM)方法。这种方法可以快速有效地可视化表示地形、景观和数字高程模型(DEM)的复杂数据集。简要讨论了其优点。第二部分介绍了自适应计算范式和进化计算在导弹仿真中的应用。因此,可以开发和分析复杂行为的模式。本章的最后一部分结合了自适应计算的概念和基于拓扑的技术,并讨论了它们在生物识别计算领域的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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