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High-performance computing in image registration

机译:图像配准中的高性能计算

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Thanks to the recent technological advances, a large variety of image data is at our disposal with variable geometric, radiometric and temporal resolution. In many applications the processing of such images needs high performance computing techniques in order to deliver timely responses e.g. for rapid decisions or real-time actions. Thus, parallel or distributed computing methods, Digital Signal Processor (DSP) architectures, Graphical Processing Unit (GPU) programming and Field-Programmable Gate Array (FPGA) devices have become essential tools for the challenging issue of processing large amount of geo-data. The article focuses on the processing and registration of large datasets of terrestrial and aerial images for 3D reconstruction, diagnostic purposes and monitoring of the environment. For the image alignment procedure, sets of corresponding feature points need to be automatically extracted in order to successively compute the geometric transformation that aligns the data. The feature extraction and matching are ones of the most computationally demanding operations in the processing chain thus, a great degree of automation and speed is mandatory. The details of the implemented operations (named LARES) exploiting parallel architectures and GPU are thus presented. The innovative aspects of the implementation are (ⅰ) the effectiveness on a large variety of unorganized and complex datasets, (ⅱ) capability to work with high-resolution images and (ⅲ) the speed of the computations. Examples and comparisons with standard CPU processing are also reported and commented.
机译:由于最近的技术进步,我们可以处理各种图像数据,这些图像数据具有可变的几何,辐射度和时间分辨率。在许多应用中,这种图像的处理需要高性能的计算技术,以便传递及时的响应,例如。用于快速决策或实时行动。因此,并行或分布式计算方法,数字信号处理器(DSP)架构,图形处理单元(GPU)编程和现场可编程门阵列(FPGA)设备已成为处理大量地理数据这一具有挑战性问题的重要工具。本文重点介绍用于3D重建,诊断目的和环境监测的大型陆地和航空图像数据集的处理和配准。对于图像对齐过程,需要自动提取相应的特征点集,以便连续计算对齐数据的几何变换。特征提取和匹配是处理链中对计算要求最高的操作之一,因此,必须具有高度的自动化和速度。因此,介绍了利用并行体系结构和GPU的已实现操作(称为LARES)的详细信息。实现的创新方面是(ⅰ)对各种无组织和复杂数据集的有效性;(ⅱ)处理高分辨率图像的能力;(ⅲ)计算速度。还报告和评论了与标准CPU处理的示例和比较。

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