Non-destructive detection of internal quality of apple based on CT image

China is a big producing country of fruits and vegetables, but the export price is quite low due to the lack of suitable grade classification technologies. Domestic academics have been dedicating themselves to ameliorating the detection technology to change this situation. X-ray computed tomography...

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Main Authors: HUANG Taotao, SUN Teng, ZHANG Jingping
Format: Article
Language:English
Published: Zhejiang University Press 2013-01-01
Series:浙江大学学报. 农业与生命科学版
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Online Access:https://www.academax.com/doi/10.3785/j.issn.1008-9209.2011.12.071
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author HUANG Taotao
SUN Teng
ZHANG Jingping
author_facet HUANG Taotao
SUN Teng
ZHANG Jingping
author_sort HUANG Taotao
collection DOAJ
description China is a big producing country of fruits and vegetables, but the export price is quite low due to the lack of suitable grade classification technologies. Domestic academics have been dedicating themselves to ameliorating the detection technology to change this situation. X-ray computed tomography (CT), making use of the specific penetrativity, can acquire an accurate faulted image which contains many internal quality information of fruit. In order to detect the character of apples quickly without damaging the sample simultaneously, a model was established based on the faulted image and some effective information related to the internal quality.Although the average CT number of pulp area in an apple profile has a good linear relationship with the quality, it is of little practical value when popularized. We intend to make CT non-destructive detection method much more useful in the prediction of the apple quality.Firstly, the window/level number of CT image should be unified at an appropriate level, before building the model between CT numbers and gray level values. Secondly, the atactic pulp area should be separated from the faulted image by means of a segmentation algorithm named Otsu, which is an adaptive threshold method. Thirdly, the weighted mean of pixel numbers in this area should be calculated and converted into CT average numbers according to the relationship built before. Finally, the model of the relationship between the CT number and the internal quality in the area was developed. The model can be used to predict and analyze the apple quality.Generally, we had an arbitrary scale with air defined as having a CT number of —1 000 HU and water of 0 HU. In our experiment, we detected the CT numbers of apple pulp ranging from —380 HU to 20 HU, which was will corresponded to the internal structure of apple.For the significant influence emerged by the window/level number in the process of converting the DICOM (digital imaging and communications in medicine) image into gray level image in BMP format, the window/level number must be unified. In comparison, we can get the clearest image at 430/—210. Then a regression model was set up between the CT numbers and the gray level values, which showed a good linear relationship with the R<sup>2</sup> reaching 0.970 8.In consideration of the results obtained by some image segmentation algorithms, Otsu (maximum between clusters variance method) was put into use. It had different segmentation thresholds by computation, ranging from 71 to 91. At the same time, the weighted mean of pixel number can also be acquired from each gray level image by Otsu, and then the CT average numbers were converted from the pixel numbers.Finally the models between CT average numbers and the apple internal quality parameters were established, showing good linear relationships between CT number and the main under as sugar, titratable acidity and moisture, with the R<sup>2</sup> values of 0.846 4, 0.823 3, 0.907 5, respectively, and the prediction error can be controlled within 5.0%, 7.4%, 3.8%.It can be concluded that the internal quality of apple can be predicted by the CT faulted image quickly and non-destructively. We also found that the window/level number in the picture format of DICOM would significantly affect the gray level in BMP format, but in a fixed number, the two had a good linear relationship. The pulp area can be well separated from the whole image by Otsu, as well as figuring out the CT average numbers. At last we build three linear regression models between the number and the sugar, the titratable acidity, and the moisture separately, with good related coefficients and low forecast errors.
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spelling doaj-art-ee330dd979d2406f842f36c0da16db212025-08-20T03:58:14ZengZhejiang University Press浙江大学学报. 农业与生命科学版1008-92092097-51552013-01-0139929710.3785/j.issn.1008-9209.2011.12.07110089209Non-destructive detection of internal quality of apple based on CT imageHUANG TaotaoSUN TengZHANG JingpingChina is a big producing country of fruits and vegetables, but the export price is quite low due to the lack of suitable grade classification technologies. Domestic academics have been dedicating themselves to ameliorating the detection technology to change this situation. X-ray computed tomography (CT), making use of the specific penetrativity, can acquire an accurate faulted image which contains many internal quality information of fruit. In order to detect the character of apples quickly without damaging the sample simultaneously, a model was established based on the faulted image and some effective information related to the internal quality.Although the average CT number of pulp area in an apple profile has a good linear relationship with the quality, it is of little practical value when popularized. We intend to make CT non-destructive detection method much more useful in the prediction of the apple quality.Firstly, the window/level number of CT image should be unified at an appropriate level, before building the model between CT numbers and gray level values. Secondly, the atactic pulp area should be separated from the faulted image by means of a segmentation algorithm named Otsu, which is an adaptive threshold method. Thirdly, the weighted mean of pixel numbers in this area should be calculated and converted into CT average numbers according to the relationship built before. Finally, the model of the relationship between the CT number and the internal quality in the area was developed. The model can be used to predict and analyze the apple quality.Generally, we had an arbitrary scale with air defined as having a CT number of —1 000 HU and water of 0 HU. In our experiment, we detected the CT numbers of apple pulp ranging from —380 HU to 20 HU, which was will corresponded to the internal structure of apple.For the significant influence emerged by the window/level number in the process of converting the DICOM (digital imaging and communications in medicine) image into gray level image in BMP format, the window/level number must be unified. In comparison, we can get the clearest image at 430/—210. Then a regression model was set up between the CT numbers and the gray level values, which showed a good linear relationship with the R<sup>2</sup> reaching 0.970 8.In consideration of the results obtained by some image segmentation algorithms, Otsu (maximum between clusters variance method) was put into use. It had different segmentation thresholds by computation, ranging from 71 to 91. At the same time, the weighted mean of pixel number can also be acquired from each gray level image by Otsu, and then the CT average numbers were converted from the pixel numbers.Finally the models between CT average numbers and the apple internal quality parameters were established, showing good linear relationships between CT number and the main under as sugar, titratable acidity and moisture, with the R<sup>2</sup> values of 0.846 4, 0.823 3, 0.907 5, respectively, and the prediction error can be controlled within 5.0%, 7.4%, 3.8%.It can be concluded that the internal quality of apple can be predicted by the CT faulted image quickly and non-destructively. We also found that the window/level number in the picture format of DICOM would significantly affect the gray level in BMP format, but in a fixed number, the two had a good linear relationship. The pulp area can be well separated from the whole image by Otsu, as well as figuring out the CT average numbers. At last we build three linear regression models between the number and the sugar, the titratable acidity, and the moisture separately, with good related coefficients and low forecast errors.https://www.academax.com/doi/10.3785/j.issn.1008-9209.2011.12.071appleinternal qualityCT imageimage segmentationOtsu
spellingShingle HUANG Taotao
SUN Teng
ZHANG Jingping
Non-destructive detection of internal quality of apple based on CT image
浙江大学学报. 农业与生命科学版
apple
internal quality
CT image
image segmentation
Otsu
title Non-destructive detection of internal quality of apple based on CT image
title_full Non-destructive detection of internal quality of apple based on CT image
title_fullStr Non-destructive detection of internal quality of apple based on CT image
title_full_unstemmed Non-destructive detection of internal quality of apple based on CT image
title_short Non-destructive detection of internal quality of apple based on CT image
title_sort non destructive detection of internal quality of apple based on ct image
topic apple
internal quality
CT image
image segmentation
Otsu
url https://www.academax.com/doi/10.3785/j.issn.1008-9209.2011.12.071
work_keys_str_mv AT huangtaotao nondestructivedetectionofinternalqualityofapplebasedonctimage
AT sunteng nondestructivedetectionofinternalqualityofapplebasedonctimage
AT zhangjingping nondestructivedetectionofinternalqualityofapplebasedonctimage