Deep Learning methodology for the identification of wood species using high-resolution macroscopic images
David Herrera-Poyatos, Andr\'es Herrera-Poyatos, Rosana Montes, Paloma, de Palacios, Luis G. Esteban, Alberto Garc\'ia Iruela, Francisco Garc\'ia, Fern\'andez, Francisco Herrera

TL;DR
This paper introduces a novel deep learning approach, TDLI-PIV, for identifying wood species from high-resolution macroscopic images, improving accuracy by capturing fine-grained patterns and using collaborative voting, supported by a new dataset.
Contribution
The paper presents a new patch-based deep learning methodology, TDLI-PIV, and introduces the GOIMAI-Phase-I dataset for fine-grained wood species identification.
Findings
TDLI-PIV outperforms existing methods in accuracy.
High-resolution images improve species discrimination.
Data augmentation enhances model robustness.
Abstract
Significant advancements in the field of wood species identification are needed worldwide to support sustainable timber trade. In this work we contribute to automate the identification of wood species via high-resolution macroscopic images of timber. The main challenge of this problem is that fine-grained patterns in timber are crucial in order to accurately identify wood species, and these patterns are not properly learned by traditional convolutional neural networks (CNNs) trained on low/medium resolution images. We propose a Timber Deep Learning Identification with Patch-based Inference Voting methodology, abbreviated TDLI-PIV methodology. Our proposal exploits the concept of patching and the availability of high-resolution macroscopic images of timber in order to overcome the inherent challenges that CNNs face in timber identification. The TDLI-PIV methodology is able to capture…
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Taxonomy
TopicsWood and Agarwood Research · Remote Sensing and LiDAR Applications · Industrial Vision Systems and Defect Detection
MethodsSparse Evolutionary Training · Activation Patching
