可穿戴系统中的资源高效计算

Mahdi Pedram, Mahsan Rofouei, Francesco Fraternali, Zhila Esna Ashari, H. Ghasemzadeh
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引用次数: 7

摘要

我们提出了两种优化技术,以最大限度地减少内存使用和计算,同时满足可穿戴系统实时分类的系统时间约束。我们的方法基于输出类出现的概率分布,为支持向量机(SVM)导出了一个分层分类器结构,以减少计算量。此外,我们还提出了一种基于支持向量机参数的内存优化技术,该技术可以存储更少的支持向量,从而减少对内存的需求。为了证明我们提出的技术的效率,我们进行了一个活动识别实验,在对14个和6个不同的活动进行分类时,能够分别节省高达35%和56%的内存存储。此外,我们还演示了分类准确性和内存节省之间的权衡,这可以根据应用程序需求进行控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Resource-Efficient Computing in Wearable Systems
We propose two optimization techniques to minimize memory usage and computation while meeting system timing constraints for real-time classification in wearable systems. Our method derives a hierarchical classifier structure for Support Vector Machine (SVM) in order to reduce the amount of computations, based on the probability distribution of output classes occurrences. Also, we propose a memory optimization technique based on SVM parameters, which results in storing fewer support vectors and as a result requiring less memory. To demonstrate the efficiency of our proposed techniques, we performed an activity recognition experiment and were able to save up to 35% and 56% in memory storage when classifying 14 and 6 different activities, respectively. In addition, we demonstrated that there is a trade-off between accuracy of classification and memory savings, which can be controlled based on application requirements.
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