Javascript must be enabled to continue!
Comprehensive Evaluation of Deep Neural Network Architectures for Parawood Pith Estimation
View through CrossRef
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 deep learning's potential for Parawood and Douglas Fir pith estimation, offering substantial benefits to wood industry quality control and production efficiency. By harnessing advanced machine learning techniques, this study advances wood industry processes, promoting the adoption of state-of-the-art technology in forestry and wood science. Doi: 10.28991/HIJ-2023-04-03-06 Full Text: PDF
Title: Comprehensive Evaluation of Deep Neural Network Architectures for Parawood Pith Estimation
Description:
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 deep learning's potential for Parawood and Douglas Fir pith estimation, offering substantial benefits to wood industry quality control and production efficiency.
By harnessing advanced machine learning techniques, this study advances wood industry processes, promoting the adoption of state-of-the-art technology in forestry and wood science.
Doi: 10.
28991/HIJ-2023-04-03-06 Full Text: PDF.
Related Results
Cross-sectioning to the core of conifers: pith anatomy of living Araucariaceae and Podocarpaceae, with comparisons to fossil pith
Cross-sectioning to the core of conifers: pith anatomy of living Araucariaceae and Podocarpaceae, with comparisons to fossil pith
Summary
Pith in woody species fulfills essential roles, from functioning as the first vascular tissue in shoots, to serving as starch storage and facilitating heartwood formation. ...
Enumeration and Characterization of Microorganisms in Raw Coir Pith and Coir Pith Dumped Soil
Enumeration and Characterization of Microorganisms in Raw Coir Pith and Coir Pith Dumped Soil
Coir pith is being considered as the reject generated during the extraction of coir fibre from coconut husks. It is a light weight and fluffy material with dusts and bits of fibres...
Preliminary Studies on Pithiness of Sugarcane
Preliminary Studies on Pithiness of Sugarcane
The normal cane stalk has a structure similar to other monocotyledons. The rind is the hard outer layer, consisting of an outer epidermal Inyer and inner cortical Inyer made up of ...
Combined Effects of Banana Peels and Pith as Dual Natural Plant-Based Coagulants for Turbidity Removal
Combined Effects of Banana Peels and Pith as Dual Natural Plant-Based Coagulants for Turbidity Removal
Plant-based coagulants are foreseen for their coagulation ability in par with chemical coagulants owing to their biodegradability, availability, and effectiveness, while chemical c...
Coir-Krishimithra: An Apposite Medium for Cultivation of Vegetable/ Medicinal/ Ornamental Plants
Coir-Krishimithra: An Apposite Medium for Cultivation of Vegetable/ Medicinal/ Ornamental Plants
Coir pith is a by-product of the coir fibre processing industry. Accumulation of coir pith leads to an environmental concern and its management is a major problem with all coir ind...
Azolla & Soya Hulls-Substitutes for Urea in Coir Pith Composting Using Pleurotus Sajor Caju
Azolla & Soya Hulls-Substitutes for Urea in Coir Pith Composting Using Pleurotus Sajor Caju
Bio composting process is the available means of converting various organic wastes generated from the industry and the agricultural sectors into beneficial products such as biofert...
A Framework to Create a Deep Learning Detector from a Small Dataset: A Case of Parawood Pith Estimation
A Framework to Create a Deep Learning Detector from a Small Dataset: A Case of Parawood Pith Estimation
A deep learning-based object detector has been successfully applied to all application areas. It has high immunity to variations in illumination and deviations among objects. One w...
Modified neural networks for rapid recovery of tokamak plasma parameters for real time control
Modified neural networks for rapid recovery of tokamak plasma parameters for real time control
Two modified neural network techniques are used for the identification of the equilibrium plasma parameters of the Superconducting Steady State Tokamak I from external magnetic mea...

