ApproxCT: Approximate Clustering Techniques for Energy Efficient Computer Vision in Cyber-Physical Systems

Raja Haseeb Javed, Ayesha Siddique, R. Hafiz, Osman Hasan, M. Shafique
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引用次数: 5

Abstract

The emerging trends in miniaturization of Internet of Things (IoT) have highly empowered the Cyber-Physical Systems (CPS) for many social applications especially, medical imaging in healthcare. The medical imaging usually involves big data processing and it is expedient to realize its clustering after data acquisition. However, the state-of-the-art clustering techniques are compute intensive and tend to reduce the processing capability of battery-driven or energy harvested IoT based embedded devices (e.g., edge and fogs). Thus, there is a desire to perform energy efficient implementation of the machine learning based clustering techniques. Since, the clustering techniques are inherently resilient to noise and thus, their resilience can be exploited for energy efficiency using approximate computing. In this paper, we proposed approximate versions of the widely used K-Means and Mean Shift clustering techniques using the state-of-the-art low power approximate adders (IMPACT). The trade-off between power consumption and the output quality is exploited using five well-known pattern recognition datasets. The experiments reveal that K-Means algorithm exhibits more error resilience towards approximation with a maximum of 10% - 25% power savings.
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网络物理系统中节能计算机视觉的近似聚类技术
物联网(IoT)小型化的新兴趋势为许多社会应用,特别是医疗保健中的医学成像,赋予了网络物理系统(CPS)强大的能力。医学影像通常涉及大数据处理,便于在数据采集后实现聚类。然而,最先进的集群技术是计算密集型的,往往会降低电池驱动或基于物联网的能量收集嵌入式设备(例如edge和fog)的处理能力。因此,人们希望执行基于聚类技术的机器学习的节能实现。由于聚类技术对噪声具有固有的弹性,因此,可以使用近似计算来利用它们的弹性来提高能源效率。在本文中,我们使用最先进的低功耗近似加法器(IMPACT)提出了广泛使用的K-Means和Mean Shift聚类技术的近似版本。使用五个众所周知的模式识别数据集,利用功耗和输出质量之间的权衡。实验表明,K-Means算法对近似具有更强的抗误差能力,最大可节省10% - 25%的功率。
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