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Identification and classification of animal fibres using artificial neural networks

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Version 1 2017-05-03, 13:58
journal contribution
posted on 2024-06-03, 10:36 authored by FH She, S Chow, B Wang, Lingxue KongLingxue Kong
It has been an important and challenging task to classify and evaluate the contents in wool blends. Quantitative characterisation of animal fibre scale patterns has attracted considerable attention, since it is the major evidence for identification and subsequent classification purpose. Although techniques such as imaging processing and linear demarcation functions have been used to identify unknown fibre type with some success, a more comprehensive approach is required to perform this task. In this paper, a new approach is presented, which employs non-linear demarcation functions by using an artificial neural network (ANN). Based on scale pattern features extracted by using image processing techniques the artificial neural network (ANN) model is to classify mohair and merino fibres. It is observed that the techniques developed in this work are very effective and have the potential to be applied to other animal fibres.

History

Journal

Seni Kikai Gakkai Shi/Journal of the Textile Machinery Society of Japan

Volume

47

Pagination

35-38

Open access

  • Yes

ISSN

0371-0580

Publication classification

CN.1 Other journal article

Issue

2

Publisher

Nihon Sen'i Kikai Gakkai/Textile Machinery Society of Japan

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