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首页> 外文期刊>Journal of Real-Time Image Processing >Design and evaluation of a parallel and optimized light-tissue interaction-based method for fast skin lesion assessment
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Design and evaluation of a parallel and optimized light-tissue interaction-based method for fast skin lesion assessment

机译:基于并行和优化的光组织相互作用的快速皮肤病变评估方法的设计和评估

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摘要

In recent years, image processing technics have attracted much attention as powerful tools in the assessment of skin lesions from multispectral images. The Kubelka-Munk Genetic Algorithm (KMGA) is a novel method which has been developed for this diagnostic purpose. It combines the Kubelka-Munk light-tissue interaction model with the Genetic Algorithm optimization process, and allows quantitative measure of cutaneous tissue by computing skin parameter maps such as melanin concentration, volume blood fraction, oxygen saturation or epidermis/dermis thickness. However, its efficiency is seriously reduced by the mass floating-point operations for each pixel of the multispectral image, and this prevents the algorithm from reaching industrial standards related to cost, power and speed for clinical applications. In this paper, our work focuses on the improvement of this theoretical achievement. Therefore, we repropose a new C-based Parallel and Optimized KMGA (PO-KMGA) technique designed and optimized using multiple ways: KM model optimized re-writing, operation massively parallelized using POSIX threads, memory use optimization and routine pipelining with Intel C++ Compiler, etc. Intensive experiments demonstrate that our introduced PO-KMGA framework spends less than 10 min to finish a job that the conventional KMGA spends around two days to do in the same hardware environment with a similar algorithm performance.
机译:近年来,图像处理技术作为从多光谱图像评估皮肤病变的有力工具已引起了广泛关注。 Kubelka-Munk遗传算法(KMGA)是为此目的而开发的一种新颖方法。它结合了Kubelka-Munk轻组织相互作用模型和遗传算法优化过程,并通过计算皮肤参数图(例如黑色素浓度,体积血分数,氧饱和度或表皮/真皮层厚度)来定量测量皮肤组织。但是,通过对多光谱图像的每个像素进行大规模浮点运算会严重降低其效率,并且这会阻止算法达到与临床应用的成本,功耗和速度有关的工业标准。在本文中,我们的工作重点是改进这一理论成果。因此,我们提出了一种新的基于C的并行和优化KMGA(PO-KMGA)技术,该技术使用多种方式进行了设计和优化:KM模型优化的重写,使用POSIX线程进行大规模并行化操作,内存使用优化以及使用Intel C ++编译器进行的常规流水线操作大量实验表明,我们引入的PO-KMGA框架花费不到10分钟的时间来完成一项工作,而传统KMGA在相同的硬件环境中花费大约两天的时间来完成类似算法的性能。

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