Timber species automatic identification from Peru Amazonia images using lightweight neural networks

Descripción del Articulo

The correct identification of timber species is a complicated task for the wood industry and government institutions regulating the different laws that ensure legal and transparent commerce. Currently, experts perform this process using the organoleptic characteristics of the wood. However, the meth...

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Detalles Bibliográficos
Autores: Velez A, Fabijańska A, Ferreira CA, Centeno T, Cobden VH, Inga JG, Gamarra D, Tomazello-Filho M
Formato: documento de trabajo
Fecha de Publicación:2022
Institución:Universidad Continental
Repositorio:CONTINENTAL-Institucional
Lenguaje:inglés
OAI Identifier:oai:repositorio.continental.edu.pe:20.500.12394/18324
Enlace del recurso:https://hdl.handle.net/20.500.12394/18324
https://doi.org/10.21203/rs.3.rs-1700909/v1
Nivel de acceso:acceso abierto
Materia:Madera
wood
Leyes de conservación
Conservation laws
Industria y comercio
Industry and commerce
https://purl.org/pe-repo/ocde/ford#1.00.00
Descripción
Sumario:The correct identification of timber species is a complicated task for the wood industry and government institutions regulating the different laws that ensure legal and transparent commerce. Currently, experts perform this process using the organoleptic characteristics of the wood. However, the methodology used is time-consuming and limited to environmental conditions. Moreover, it has a scalability issue since acquiring this specific knowledge and experience has a slow learning curve. On the other hand, deep learning models have evolved as possible solutions for process automation. Therefore, this paper explores convolutional neural network models suited to run on edge devices. The present study created a database with 25k images of 25 timber species from the Peruvian Amazon. We trained-validated multiple lightweight models (less than 5M). The experiments were made using a repeated stratified k-fold cross-validation approach to estimate the performance of the classifiers. The experiments show that the best model has an F1 score metric of 99.90\% and 58ms latency using 561k parameters. Furthermore, the created model showed an excellent ability to identify species, opening up space for future integration with mobile applications, which helps minimize the time spent and the identification errors on timber identification carried out by experts on control points.
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