An Odor Labeling Convolutional Encoder-Decoder for Odor Sensing in Machine Olfaction

Sensors (Basel). 2021 Jan 8;21(2):388. doi: 10.3390/s21020388.

Abstract

Deep learning methods have been widely applied to visual and acoustic technology. In this paper, we propose an odor labeling convolutional encoder-decoder (OLCE) for odor identification in machine olfaction. OLCE composes a convolutional neural network encoder and decoder where the encoder output is constrained to odor labels. An electronic nose was used for the data collection of gas responses followed by a normative experimental procedure. Several evaluation indexes were calculated to evaluate the algorithm effectiveness: accuracy 92.57%, precision 92.29%, recall rate 92.06%, F1-Score 91.96%, and Kappa coefficient 90.76%. We also compared the model with some algorithms used in machine olfaction. The comparison result demonstrated that OLCE had the best performance among these algorithms.

Keywords: electronic nose; encoder-decoder; machine olfactions; neural networks; odor identifications.

Publication types

  • Letter