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18.4 A matrix-multiplying ADC implementing a machine-learning classifier directly with data conversion

机译:18.4矩阵 - 乘法ADC直接使用数据转换实现机器学习分类器

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Embedded sensing systems conventionally perform A-to-D conversion followed by signal analysis. In many applications, the analysis of interest is inference (e.g., classification), but the sensor signals involved are too complex to model analytically. Machine learning is gaining prominence because it enables data-driven training of classifiers, overcoming the need for analytical models. This work presents: 1) an algorithmic formulation, where feature extraction and classification are combined into a single matrix, reducing the total multiplications needed, and 2) a matrix-multiplying ADC (MMADC) that enables multiplication of input samples by a programmable matrix. Thus, the MMADC combines feature extraction and classification with data conversion, mitigating the need for further computations. Two systems are demonstrated: an ECG-based cardiac-arrhythmia detector and an image-pixel-based gender detector.
机译:嵌入式传感系统通常执行A-TO-D转换,然后进行信号分析。 在许多应用中,感兴趣的分析是推理的(例如,分类),但是涉及的传感器信号在分析上的模型太复杂。 机器学习是获得突出的,因为它能够实现分类器的数据驱动训练,克服对分析模型的需求。 该工作呈现:1)将特征提取和分类组合成单个矩阵的算法制剂,减少所需的总乘法,以及2)矩阵乘以ADC(MMADC),其能够通过可编程矩阵乘以输入样本的乘法。 因此,MMADC将特征提取和分类与数据转换组合,减轻了对进一步计算的需要。 证明了两个系统:基于ECG的心脏 - 心律失常检测器和基于图像像素的性别探测器。

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