Accurate pith estimation is crucial for maintaining the quality of wood products. This study delves into deep learning techniques for precise Parawood pith estimation, employing popular convolutional neural networks (ResNet50, MobileNet, and Xception) with adapted regression heads. Through variations in regression functions, optimizers, and training epochs, the most effective models were pinpointed. Xception, coupled with Huber Loss regression, Nadam optimizer, and 200 epochs, showcased superior performance, achieving a 4.48 mm mean error (with a standard deviation of 3.69 mm) in Parawood. Notably, benchmarking on the Douglas Fir dataset yielded similar results (2.81 mm mean error, standard deviation: 1.57 mm). These findings underscore dee...
Aim of Study: As an innovative prediction technique, Artificial Intelligence technique based on a De...
This paper describes an automated classifier for the identification of good wood and ...
A deep learning-based object detector has been successfully applied to all application areas. It has...
Accurate pith estimation is crucial for maintaining the quality of wood products. This study delves ...
reservedThis thesis introduces a deep learning model designed for the grading of wood boards. In par...
Detection of pith, annual rings and knots in relation to timber board cross-sections is relevant for...
In softwood species, annual ring width correlates with various timber characteristics, including the...
Só está disponível o resumo.Influence of heartwood on pulp properties explained by machine learning ...
Timber from the second cutting cycle may make up the majority of future crop volumetric. However, th...
The aim of this work is to develop a tool to predict some pulp properties e.g., pulp yield, Kappa nu...
Current lumber scanners used in industrial wood manufacturing plants such as rough mills and floorin...
The recent developments in artificial intelligence have the potential to facilitate new research met...
Tracking of tree logs from a harvesting site to its processing site is a legal requirement for timbe...
Root and Butt-Rot (RBR) is having a significant economic impact on the forest industry and is expec...
International audienceIn this paper, we present an algorithm for pith estimation from digital images...
Aim of Study: As an innovative prediction technique, Artificial Intelligence technique based on a De...
This paper describes an automated classifier for the identification of good wood and ...
A deep learning-based object detector has been successfully applied to all application areas. It has...
Accurate pith estimation is crucial for maintaining the quality of wood products. This study delves ...
reservedThis thesis introduces a deep learning model designed for the grading of wood boards. In par...
Detection of pith, annual rings and knots in relation to timber board cross-sections is relevant for...
In softwood species, annual ring width correlates with various timber characteristics, including the...
Só está disponível o resumo.Influence of heartwood on pulp properties explained by machine learning ...
Timber from the second cutting cycle may make up the majority of future crop volumetric. However, th...
The aim of this work is to develop a tool to predict some pulp properties e.g., pulp yield, Kappa nu...
Current lumber scanners used in industrial wood manufacturing plants such as rough mills and floorin...
The recent developments in artificial intelligence have the potential to facilitate new research met...
Tracking of tree logs from a harvesting site to its processing site is a legal requirement for timbe...
Root and Butt-Rot (RBR) is having a significant economic impact on the forest industry and is expec...
International audienceIn this paper, we present an algorithm for pith estimation from digital images...
Aim of Study: As an innovative prediction technique, Artificial Intelligence technique based on a De...
This paper describes an automated classifier for the identification of good wood and ...
A deep learning-based object detector has been successfully applied to all application areas. It has...