高光谱图像分析中端元和丰度估计的RVC-CAL库

R. L. López, D. Quintín, E. J. Martínez, C. S. Álvaro
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摘要

高光谱成像(HI)从整个电磁频谱中收集信息,覆盖了很宽的波长范围。虽然这项技术最初是为遥感和地球观测而开发的,但它的多重优势——如高光谱分辨率——导致了它在其他领域的应用,如癌症检测。然而,这个新领域显示出特定的要求;例如,它需要完成严格的时间规范,因为所有潜在的应用-如手术指导或体内肿瘤检测-都意味着实时需求。实现这一时间要求是一个巨大的挑战,因为高光谱图像会产生非常大量的数据来处理。因此,一些新的研究方向正在研究新的处理技术,其中最相关的是系统并行化。在这一行中,本文描述了一个新的RVC-CAL语言高光谱处理库的构建,该库专为多媒体应用而设计,允许多线程编译和系统并行化。本文介绍了实现高光谱成像处理链四个阶段中的两个阶段所需的库函数的开发——端元和丰度估计。结果表明,与现有的高光谱图像分析软件相比,该库的速度提高了约30%;具体而言,端元估计步骤平均加速达到27.6%,执行时间节省近8秒。它还显示了一些瓶颈的存在,因为由于要传输的数据量,不同参与者之间的通信接口存在瓶颈。最后,表明该库大大简化了实现过程。因此,实验结果显示了RVC-CAL库在实时分析高光谱图像方面的潜力,因为它为研究系统性能提供了足够的资源。
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RVC-CAL library for endmember and abundance estimation in hyperspectral image analysis
Hyperspectral imaging (HI) collects information from across the electromagnetic spectrum, covering a wide range of wavelengths. Although this technology was initially developed for remote sensing and earth observation, its multiple advantages - such as high spectral resolution - led to its application in other fields, as cancer detection. However, this new field has shown specific requirements; for instance, it needs to accomplish strong time specifications, since all the potential applications - like surgical guidance or in vivo tumor detection - imply real-time requisites. Achieving this time requirements is a great challenge, as hyperspectral images generate extremely high volumes of data to process. Thus, some new research lines are studying new processing techniques, and the most relevant ones are related to system parallelization. In that line, this paper describes the construction of a new hyperspectral processing library for RVC–CAL language, which is specifically designed for multimedia applications and allows multithreading compilation and system parallelization. This paper presents the development of the required library functions to implement two of the four stages of the hyperspectral imaging processing chain--endmember and abundances estimation. The results obtained show that the library achieves speedups of 30%, approximately, comparing to an existing software of hyperspectral images analysis; concretely, the endmember estimation step reaches an average speedup of 27.6%, which saves almost 8 seconds in the execution time. It also shows the existence of some bottlenecks, as the communication interfaces among the different actors due to the volume of data to transfer. Finally, it is shown that the library considerably simplifies the implementation process. Thus, experimental results show the potential of a RVC–CAL library for analyzing hyperspectral images in real-time, as it provides enough resources to study the system performance.
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