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Discrete Cosine Transform Based Causal Convolutional Neural Network for Drift Compensation in Chemical Sensors

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posted on 2021-06-04, 22:04 authored by Diaa Badawi, Agamyrat Agambayev, Sule Ozev, A Enis Cetin
Sensor drift is a major problem in chemical sensors that re-quires addressing for reliable and accurate detection of chemical analytes. In this paper, we develop a causal convolutional neural network (CNN) with a Discrete Cosine Trans-form (DCT) layer to estimate the drift signal. In the DCT module, we apply soft-thresholding nonlinearity in the trans-form domain to denoise the data and obtain a sparse representation of the drift signal. The soft-threshold values are learned during training. Our results show that DCT layer-based CNNs are able to produce a slowly varying baseline drift signal. We train the CNN on synthetic data and test it on real chemical sensor data. Our results show that we can have an accurate and smooth drift estimate even when the observed sensor signal is very noisy.

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CPS: Medium: Collaborative Research: Constantly on the Lookout: Low-cost Sensor Enabled Explosive Detection to Protect High Density Environments

Directorate for Computer & Information Science & Engineering

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Citation

Badawi, D., Agambayev, A., Ozev, S.Enis Cetin, A. (2021, June). Discrete Cosine Transform Based Causal Convolutional Neural Network for Drift Compensation in Chemical Sensors. ICASSP 2021 - 2021 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP). IEEE. https://doi.org/10.1109/icassp39728.2021.9414512

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IEEE

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