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Impurities detection in edible bird’s nest using optical segmentation and image fusion.

Authors :
Yee, Cong Kai
Yeo, Ying Heng
Cheng, Lai Hoong
Yen, Kin Sam
Source :
Machine Vision & Applications. Nov2020, Vol. 31 Issue 7/8, p1-8. 8p.
Publication Year :
2020

Abstract

The cleanliness of edible bird’s nest (EBN) is among the determinative factors for market acceptance. As it is meant for human consumption, EBN should be free of any impurities or matter which are foreign to it, such as bird feathers, egg fragments and droppings. However, natural variations in composition, density and thickness impose inconsistency to the level of translucency and colour of EBN, resulting in intensity inhomogeneity in EBN images that substantially reduce the accuracy of the segmentation and detection of impurities. Consequently, the segmentation and detection of impurities, which are essential to visual automation in the cleaning and inspection processes, remain unsolved. This work proposes a novel optical segmentation method to segment impurities from the EBN, in order to facilitate the detection of impurities. EBN images captured under two different lighting scenarios, namely, low-angle blue-diffused lighting and red-diffused backlighting, were used to prepare the fused image for background-EBN-impurities segmentation. The applicability of the method was demonstrated by comparing the detection results with those of human inspectors. With a simple thresholding operation performed on fused images, the impurities detection algorithm recorded a true positive/recall rate of 93.39%, a precision of 71.17% and a false-negative detection rate of 4.8%. Despite the high misclassification rate of 32.25%, the algorithm was able to detect more than 93% of the impurities, compared to human inspectors, who required a second examination on the EBNs. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09328092
Volume :
31
Issue :
7/8
Database :
Academic Search Index
Journal :
Machine Vision & Applications
Publication Type :
Academic Journal
Accession number :
145894528
Full Text :
https://doi.org/10.1007/s00138-020-01124-y