Characterization of fiber and vessel elements in pulp suspension images


Autoria(s): Kurakina, Tatiana
Data(s)

21/02/2013

21/02/2013

2012

Resumo

The thesis is related to the topic of image-based characterization of fibers in pulp suspension during the papermaking process. Papermaking industry is focusing on process control optimization and automatization, which makes it possible to manufacture highquality products in a resource-efficient way. Being a part of the process control, pulp suspension analysis allows to predict and modify properties of the end product. This work is a part of the tree species identification task and focuses on analysis of fiber parameters in the pulp suspension at the wet stage of paper production. The existing machine vision methods for pulp characterization were investigated, and a method exploiting direction sensitive filtering, non-maximum suppression, hysteresis thresholding, tensor voting, and curve extraction from tensor maps was developed. Application of the method to the microscopic grayscale pulp images made it possible to detect curves corresponding to fibers in the pulp image and to compute their morphological characteristics. Performance of the method was evaluated based on the manually produced ground truth data. An accuracy of fiber characteristics estimation, including length, width, and curvature, for the acacia pulp images was found to be 84, 85, and 60% correspondingly.

Identificador

http://www.doria.fi/handle/10024/88045

URN:NBN:fi:fe201301221640

Idioma(s)

en

Palavras-Chave #image processing #machine vision #image segmentation #tensor voting #curve
Tipo

Master's thesis

Diplomityö