Experimental Recognition System for Dirty Eggshell by Using Image Analysis Technique
The present study was focused on the design and implementation of an experimental recognition system for dirty chicken eggshell by using an image analysis technique. Image analysis based observation and evaluation techniques can be used efficiently and effectively for agricultural product quality co...
Main Authors: | , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Turkish Science and Technology Publishing (TURSTEP)
2020-06-01
|
Series: | Turkish Journal of Agriculture: Food Science and Technology |
Subjects: | |
Online Access: | http://www.agrifoodscience.com/index.php/TURJAF/article/view/3308 |
id |
doaj-61e2ed7461484a208b835817cf3663e2 |
---|---|
record_format |
Article |
spelling |
doaj-61e2ed7461484a208b835817cf3663e22020-11-25T03:39:27ZengTurkish Science and Technology Publishing (TURSTEP)Turkish Journal of Agriculture: Food Science and Technology2148-127X2020-06-01851122112610.24925/turjaf.v8i5.1122-1126.33081635Experimental Recognition System for Dirty Eggshell by Using Image Analysis TechniqueAbdullah Beyaz0Serdar Özlü1Dilara Gerdan2Department of Agricultural Machinery and Technologies Engineering, Faculty of Agriculture, Ankara University, 06110 AnkaraDepartment of Animal Science, Faculty of Agriculture, Ankara University, 06110 AnkaraDepartment of Agricultural Machinery and Technologies Engineering, Faculty of Agriculture, Ankara University, 06110 AnkaraThe present study was focused on the design and implementation of an experimental recognition system for dirty chicken eggshell by using an image analysis technique. Image analysis based observation and evaluation techniques can be used efficiently and effectively for agricultural product quality control. Dirt stains on eggs are the result of mainly by feces (black to light brown stains), uric acid (white stains), yolk, and blood. The experimental system was used to obtain dark level images of dirty stains of chicken eggs owing to feces. For this aim, the dirty chicken eggs which have dirty parts were put under a webcam, and dirtiness degree was evaluated by using developed image analysis software at the LabVIEW platform. For the experiment, 100 clean and 100 dirty eggs were used to accurate the determination of dark stains. The results of the research showed that the designed experimental system pointed an accuracy of 99.8% at painted grade eggs. On the other hand, the accuracy of the differentiation of the dirt stains by feces was 98.5%. The developed system can be upgraded for developing egg sorting machines by presence-absence of dirty stains in eggshell.http://www.agrifoodscience.com/index.php/TURJAF/article/view/3308eggimage analysisdirty egg sortingfood qualitylabview |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Abdullah Beyaz Serdar Özlü Dilara Gerdan |
spellingShingle |
Abdullah Beyaz Serdar Özlü Dilara Gerdan Experimental Recognition System for Dirty Eggshell by Using Image Analysis Technique Turkish Journal of Agriculture: Food Science and Technology egg image analysis dirty egg sorting food quality labview |
author_facet |
Abdullah Beyaz Serdar Özlü Dilara Gerdan |
author_sort |
Abdullah Beyaz |
title |
Experimental Recognition System for Dirty Eggshell by Using Image Analysis Technique |
title_short |
Experimental Recognition System for Dirty Eggshell by Using Image Analysis Technique |
title_full |
Experimental Recognition System for Dirty Eggshell by Using Image Analysis Technique |
title_fullStr |
Experimental Recognition System for Dirty Eggshell by Using Image Analysis Technique |
title_full_unstemmed |
Experimental Recognition System for Dirty Eggshell by Using Image Analysis Technique |
title_sort |
experimental recognition system for dirty eggshell by using image analysis technique |
publisher |
Turkish Science and Technology Publishing (TURSTEP) |
series |
Turkish Journal of Agriculture: Food Science and Technology |
issn |
2148-127X |
publishDate |
2020-06-01 |
description |
The present study was focused on the design and implementation of an experimental recognition system for dirty chicken eggshell by using an image analysis technique. Image analysis based observation and evaluation techniques can be used efficiently and effectively for agricultural product quality control. Dirt stains on eggs are the result of mainly by feces (black to light brown stains), uric acid (white stains), yolk, and blood. The experimental system was used to obtain dark level images of dirty stains of chicken eggs owing to feces. For this aim, the dirty chicken eggs which have dirty parts were put under a webcam, and dirtiness degree was evaluated by using developed image analysis software at the LabVIEW platform. For the experiment, 100 clean and 100 dirty eggs were used to accurate the determination of dark stains. The results of the research showed that the designed experimental system pointed an accuracy of 99.8% at painted grade eggs. On the other hand, the accuracy of the differentiation of the dirt stains by feces was 98.5%. The developed system can be upgraded for developing egg sorting machines by presence-absence of dirty stains in eggshell. |
topic |
egg image analysis dirty egg sorting food quality labview |
url |
http://www.agrifoodscience.com/index.php/TURJAF/article/view/3308 |
work_keys_str_mv |
AT abdullahbeyaz experimentalrecognitionsystemfordirtyeggshellbyusingimageanalysistechnique AT serdarozlu experimentalrecognitionsystemfordirtyeggshellbyusingimageanalysistechnique AT dilaragerdan experimentalrecognitionsystemfordirtyeggshellbyusingimageanalysistechnique |
_version_ |
1724538786894839808 |