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25 April 2024
 
  » arxiv » 1903.7821

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POP-CNN: Predicting Odor's Pleasantness with Convolutional Neural Network
Danli Wu ; Yu Cheng ; Dehan Luo ; Kin-Yeung Wong ; Kevin Hung ; Zhijing Yang ;
Date 19 Mar 2019
AbstractPredicting odor’s pleasantness simplifies the evaluation of odors and has the potential to be applied in perfumes and environmental monitoring industry. Classical algorithms for predicting odor’s pleasantness generally use a manual feature extractor and an independent classifier. Manual designing a good feature extractor depend on expert knowledge and experience is the key to the accuracy of the algorithms. In order to circumvent this difficulty, we proposed a model for predicting odor’s pleasantness by using convolutional neural network. In our model, the convolutional neural layers replace manual feature extractor and show better performance. The experiments show that the correlation between our model and human is over 90% on pleasantness rating. And our model has 99.9% accuracy in distinguishing between absolutely pleasant or unpleasant odors.
Source arXiv, 1903.7821
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