Towards GPU Accelerated HyperSpectral Depth Estimation in Medical Applications

Jaime Sancho, Gemma Urbanos, Luisa Ruiz, Marta Villanueva, Gonzalo Rosa, A. Diaz, M. Villa, M. Chavarrías, Alfonso Lagares, R. Salvador, E. Juárez, C. Sanz
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引用次数: 1

Abstract

HyperSpectral (HS) images are commonly used for classification tasks in different domains, such as medicine. In this field, a recent use is the differentiation between healthy tissues and different types of cancerous tissues. To this end, different machine learning techniques have been proposed to generate classification maps that indicate the type of tissue corresponding to each pixel in the image. These 2D representations can be used stand-alone, but they can not be properly registered with other valuable data sources like Magnetic Resonance Imaging (MRI), which can improve the accuracy of the system. For this reason, this paper builds the foundations of a multi-modal classification system that will incorporate 3D information into HS images. Specifically, we address the acceleration of one of the hotspots in depth estimation tools/algorithms.MPEG-I Depth Estimation Reference Software (DERS) provides high-quality depth maps relying on a global energy optimizer algorithm: Graph Cuts. However, this algorithm needs huge processing times, preventing its use during surgical operations. This work introduces GoRG (Graph cuts Reference depth estimation in GPU), a GPU accelerated DERS able to produce depth maps from RGB and HS images. In this paper, due to the lack of HS multi-view datasets at the moment, results are reported on RGB images to validate the acceleration strategy.GoRG shows a ×25 average speed-up compared to baseline DERS 8.0, reducing total computation time from around one hour for 8 frames to only a few minutes. A consequence of our parallelization is an average decrease of 1.6 dB in Weighted-to-Spherically-Uniform Peak-Signal-to-Noise-Ratio (WS-PSNR), with some remarkable disparities approaching 4 dB. However, using Structural Similarity Index (SSIM) as metric results come closer to baseline DERS. Effectively, an average decrease of only 1.20% is achieved showing that the obtained speed-up gains compesate the subjective quality losses.
GPU加速高光谱深度估计在医学中的应用
高光谱(HS)图像通常用于不同领域的分类任务,例如医学。在这一领域,最近的一个应用是区分健康组织和不同类型的癌组织。为此,已经提出了不同的机器学习技术来生成分类图,这些分类图表明图像中每个像素对应的组织类型。这些2D表示可以单独使用,但它们不能与其他有价值的数据源(如磁共振成像(MRI))正确注册,这可以提高系统的准确性。为此,本文建立了一个多模态分类系统的基础,将三维信息纳入到HS图像中。具体来说,我们解决了深度估计工具/算法中的一个热点加速问题。MPEG-I深度估计参考软件(DERS)提供高质量的深度图依赖于一个全局能量优化算法:图形切割。然而,该算法需要大量的处理时间,阻碍了其在外科手术中的应用。本文介绍了GoRG (Graph cuts Reference depth estimation in GPU),这是一种GPU加速的DERS,能够从RGB和HS图像中生成深度图。由于目前缺乏HS多视图数据集,本文报道了RGB图像上的结果来验证加速策略。与基线DERS 8.0相比,GoRG显示了×25平均加速,将总计算时间从8帧的大约1小时减少到仅几分钟。我们的并行化的结果是加权球均匀峰值信噪比(WS-PSNR)平均降低1.6 dB,其中一些显著的差异接近4 dB。然而,使用结构相似指数(SSIM)作为度量结果更接近基线DERS。有效地,平均仅降低了1.20%,表明所获得的加速增益补偿了主观质量损失。
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