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Determination of quasi-primary odors by endpoint detection

Hanxiao Xu, Koki Kitai, Kosuke Minami, Makito Nakatsu, Genki Yoshikawa, Koji Tsuda, Kota Shiba, Ryo Tamura

2021Scientific Reports24 citationsDOIOpen Access PDF

Abstract

It is known that there are no primary odors that can represent any other odors with their combination. Here, we propose an alternative approach: "quasi" primary odors. This approach comprises the following condition and method: (1) within a collected dataset and (2) by the machine learning-based endpoint detection. The quasi-primary odors are selected from the odors included in a collected odor dataset according to the endpoint score. While it is limited within the given dataset, the combination of such quasi-primary odors with certain ratios can reproduce any other odor in the dataset. To visually demonstrate this approach, the three quasi-primary odors having top three high endpoint scores are assigned to the vertices of a chromaticity triangle with red, green, and blue. Then, the other odors in the dataset are projected onto the chromaticity triangle to have their unique colors. The number of quasi-primary odors is not limited to three but can be set to an arbitrary number. With this approach, one can first find "extreme" odors (i.e., quasi-primary odors) in a given odor dataset, and then, reproduce any other odor in the dataset or even synthesize a new arbitrary odor by combining such quasi-primary odors with certain ratios.

Topics & Concepts

OdorPrimary (astronomy)Computer scienceChromaticityPattern recognition (psychology)Artificial intelligencePoint (geometry)Set (abstract data type)MathematicsBiologyPhysicsNeuroscienceProgramming languageAstronomyGeometryAdvanced Chemical Sensor TechnologiesOlfactory and Sensory Function StudiesInsect Pheromone Research and Control
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