...
首页> 外文期刊>Microelectronics journal >A low-power asynchronous hardware implementation of a novel SVM classifier, with an application in a speech recognition system
【24h】

A low-power asynchronous hardware implementation of a novel SVM classifier, with an application in a speech recognition system

机译:一种新型SVM分类器的低功耗异步硬件实现,在语音识别系统中具有应用程序

获取原文
获取原文并翻译 | 示例
           

摘要

Machine Learning (ML) has been applied in so many areas in reason of its robustness, usability, and reliability, mainly in hardware implementation. One of its well-known algorithms is the Support Vector Machine (SVM), the simplest to be applied in hardware because of its mathematical modeling. In this study, we propose the implementation in hardware of SVM multi-class classifiers within the asynchronous paradigm (i.e., without clock signal application) in a 4-stage pipeline architecture. With the purpose to evaluate the proposed architecture behavior, we used a Field Programmable Gate Array (FPGA) device to prototype the circuit. The proposed asynchronous SVM classifier is applied in a Speech Recognition system of 30 classes where a hybrid training algorithm was processed in the Matlab software, known as PSO-SVM training algorithm. Therefore, the training phase was processed in software in reason of its computational load. For the SVM classification phase, we propose, for the first time to the best of our knowledge, an asynchronous pipeline architecture of four stages with Multiply-Accumulator (MAC) unit application and three different control circuits described from Extended Burst-Mode (XBM) and State Transition Graph (STG) specifications, leading to energy-efficient design. In order to validate the SVM recognition results in the speech recognition application, the tests are from 60 speeches and 20 speakers, so it is a diversified and reliable data set of tests. The main goal here was to design a machine learning hardware implementation in a low power application and, through that, to prove that the asynchronous paradigm reduced power. As a result, we obtained a reduced power consumption of 5.72 mW, a fast average response time which was 0.61 is and the most area-efficient circuit (1315 LUTs); the accuracy in recognition success rate was another preoccupation, and it was very successful, 98% of success. Besides, we present comparisons with an asynchronous version of the same SVM datapath and with different synchronous architectures from literature to prove that our novelty is better in power consumption and area size. For hardware applications where low power and high performance are the sought features, the presented architecture revealed the best position when compared to similar works from the recent technical literature for pattern recognition systems.
机译:机器学习(ML)已在这么多领域应用于其稳健性,可用性和可靠性,主要是在硬件实现中。其众所周知的算法之一是支持向量机(SVM),由于其数学建模,最简单的待应用于硬件。在本研究中,我们在4阶段管道架构中提出了在异步范式(I.E.,没有时钟信号应用程序)内的SVM多级分类器的硬件。有目的是评估所提出的架构行为,我们使用现场可编程门阵列(FPGA)设备来原型电路。所提出的异步SVM分类器应用于30个类的语音识别系统,其中在Matlab软件中处理了混合训练算法,称为PSO-SVM训练算法。因此,训练阶段是以其计算负载的软件处理的。对于SVM分类阶段,我们向我们的知识首次提出了四个阶段的异步管道架构,其中四个阶段具有乘法累加器(MAC)单元应用和从扩展突发模式(XBM)中描述的三个不同的控制电路和状态过渡图(STG)规格,导致节能设计。为了验证SVM识别结果,在语音识别应用程序中,测试来自60个演示和20个扬声器,因此它是一种多样化且可靠的数据集。这里的主要目标是在低功耗应用中设计机器学习硬件实现,并通过此证明异步范式降低功率。结果,我们获得了5.72兆瓦的降低的功耗,快速平均响应时间为0.61,最有效的电路(1315 LUT);认可成功率的准确性是另一个关注,它非常成功,成功的98%。此外,我们向不同的SVM DataPath以及来自文献的不同同步架构的比较,以证明我们的新颖性更好的功耗和面积大小。对于低功耗和高性能的硬件应用是所寻求的特征,所呈现的架构与模式识别识别系统最近的技术文献的类似作品相比,呈现了最佳位置。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号