Realizing Low-Energy Classification Systems by Implementing Matrix Multiplication Directly Within an ADC | IEEE Journals & Magazine | IEEE Xplore

Realizing Low-Energy Classification Systems by Implementing Matrix Multiplication Directly Within an ADC


Abstract:

In wearable and implantable medical-sensor applications, low-energy classification systems are of importance for deriving high-quality inferences locally within the devic...Show More

Abstract:

In wearable and implantable medical-sensor applications, low-energy classification systems are of importance for deriving high-quality inferences locally within the device. Given that sensor instrumentation is typically followed by A-D conversion, this paper presents a system implementation wherein the majority of the computations required for classification are implemented within the ADC. To achieve this, first an algorithmic formulation is presented that combines linear feature extraction and classification into a single matrix transformation. Second, a matrix-multiplying ADC (MMADC) is presented that enables multiplication between an analog input sample and a digital multiplier, with negligible additional energy beyond that required for A-D conversion. Two systems mapped to the MMADC are demonstrated: (1) an ECG-based cardiac arrhythmia detector; and (2) an image-pixel-based facial gender detector. The RMS error over all multiplication performed, normalized to the RMS of ideal multiplication results is 0.018. Further, compared to idealized versions of conventional systems, the energy savings obtained are estimated to be 13× and 29×, respectively, while achieving similar level of performance.
Published in: IEEE Transactions on Biomedical Circuits and Systems ( Volume: 9, Issue: 6, December 2015)
Page(s): 825 - 837
Date of Publication: 28 December 2015

ISSN Information:

PubMed ID: 26849205

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