On How to Push Efficient Medical Semantic Segmentation to the Edge: the SENECA approach

Raffaele Berzoini, E. D’Arnese, Davide Conficconi
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引用次数: 1

Abstract

Semantic segmentation is the process of assigning each input image pixel a value representing a class, and it enables the clustering of pixels into object instances. It is a highly employed computer vision task in various fields such as autonomous driving and medical image analysis. In particular, in medical practice, semantic segmentation identifies different regions of interest within an image, like different organs or anomalies such as tumors. Fully Convolutional Networks (FCNs) have been employed to solve semantic segmentation in different fields and found their way in the medical one. In this context, the low contrast among semantically different areas, the constraint related to energy consumption, and computation resource availability increase the complexity and limit their adoption in daily practice. Based on these considerations, we propose SENECA to bring medical semantic segmentation to the edge with high energy efficiency and low segmentation time while preserving the accuracy. We reached a throughput of 335.4 ± 0.34 frames per second on the FPGA, 4.65× better than its GPU counterpart, with a global dice score of 93.04% ± 0.07 and an improvement in terms of energy efficiency with respect to the GPU of 12.7×.
如何将高效的医学语义分割推向边缘:SENECA方法
语义分割是为每个输入图像像素分配代表一个类的值的过程,它使像素聚类到对象实例中。在自动驾驶和医学图像分析等各个领域,它都是一项高度应用的计算机视觉任务。特别是在医学实践中,语义分割识别图像中不同的感兴趣区域,如不同的器官或肿瘤等异常。全卷积网络(Fully Convolutional Networks, fns)已被广泛应用于不同领域的语义分割,并在医学领域得到了广泛应用。在这种情况下,语义不同区域之间的低对比度,与能量消耗相关的约束以及计算资源可用性增加了复杂性并限制了它们在日常实践中的采用。基于这些考虑,我们提出了SENECA,在保持准确性的同时,以高能效和低分割时间将医学语义分割带到边缘。我们在FPGA上达到了每秒335.4±0.34帧的吞吐量,比GPU高4.65倍,全局骰子得分为93.04%±0.07,相对于GPU的能源效率提高了12.7倍。
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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