2023
DOI: 10.1002/ps.7566
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The interpretability of the activity signal detection model for wood‐boring pests Semanotus bifasciatus in the larval stage

Abstract: BackgroundThe acoustic detection model of activity signals based on deep learning could detect wood‐boring pests accurately and reliably. However, the black‐box characteristics of the deep learning model have limited the credibility of the results and hindered its application. Aiming to address the reliability and interpretability of the model, this paper designed an active interpretable model called Dynamic Acoustic Larvae Prototype Network (DalPNet), which used the prototype to assist model decisions and ach… Show more

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