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Adaptive bacteria colony picking in unstructured environments using intensity histogram and unascertained LS-SVM classifier.

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posted on 2019-10-15, 11:25 authored by Kun Zhang, Minrui Fei, Xin Li, Huiyu Zhou
Features analysis is an important task which can significantly affect the performance of automatic bacteria colony picking. Unstructured environments also affect the automatic colony screening. This paper presents a novel approach for adaptive colony segmentation in unstructured environments by treating the detected peaks of intensity histograms as a morphological feature of images. In order to avoid disturbing peaks, an entropy based mean shift filter is introduced to smooth images as a preprocessing step. The relevance and importance of these features can be determined in an improved support vector machine classifier using unascertained least square estimation. Experimental results show that the proposed unascertained least square support vector machine (ULSSVM) has better recognition accuracy than the other state-of-the-art techniques, and its training process takes less time than most of the traditional approaches presented in this paper.

Funding

This work was supported by the National Key Scientific Instrument and Equipment Development Projects (2012YQ15008703 and 2012YQ15008702).

History

Citation

The Scientific World Journal, Volume 2014, Article ID 928395

Author affiliation

/Organisation

Version

  • VoR (Version of Record)

Published in

The Scientific World Journal

Publisher

Hindawi

eissn

1537-744X

Acceptance date

2014-04-10

Copyright date

2014

Available date

2019-10-15

Publisher version

https://www.hindawi.com/journals/tswj/2014/928395/

Language

en

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