Detection of Odor Presence via Deep Neural Networks
By: Matin Hassanloo, Ali Zareh, Mehmet Kemal Özdemir
Potential Business Impact:
Detects smells from brain signals.
Odor detection underpins food safety, environmental monitoring, medical diagnostics, and many more fields. The current artificial sensors developed for odor detection struggle with complex mixtures while non-invasive recordings lack reliable single-trial fidelity. To develop a general system for odor detection, in this study we present a preliminary work where we aim to test two hypotheses: (i) that spectral features of local field potentials (LFPs) are sufficient for robust single-trial odor detection and (ii) that signals from the olfactory bulb alone are adequate. To test two hypotheses, we propose an ensemble of complementary one-dimensional convolutional networks (ResCNN and AttentionCNN) that decodes the presence of odor from multichannel olfactory bulb LFPs. Tested on 2,349 trials from seven awake mice, our final ensemble model supports both hypotheses, achieving a mean accuracy of 86.6%, an F1-score of 81.0%, and an AUC of 0.9247, substantially outperforming previous benchmarks. In addition, the t-SNE visualization confirms that our framework captures biologically significant signatures. These findings establish the feasibility of robust single-trial detection of the presence of odor from extracellular LFPs, as well as demonstrate the potential of deep learning models to provide a deeper understanding of olfactory representations.
Similar Papers
Online Reliable Anomaly Detection via Neuromorphic Sensing and Communications
Machine Learning (CS)
Finds unusual signals in brain or nature.
Scensory: Automated Real-Time Fungal Identification and Spatial Mapping
Signal Processing
Finds mold in air, tells you where.
SMELLNET: A Large-scale Dataset for Real-world Smell Recognition
Artificial Intelligence
AI learns to identify smells like a nose.