Han Chang’s scientific contributions

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Publications (4)


Non-Destructive Identification of Internal Watercore in Apples Based on Online Vis/NIR Spectroscopy
  • Article

January 2020

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113 Reads

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18 Citations

Transactions of the ASABE (American Society of Agricultural and Biological Engineers)

Han Chang

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Hao Tian

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Huirong Xu

Highlights A custom-designed online Vis/NIR spectroscopy system was used for real-time detection of watercore in apples. Watercore severity index (WSI) was applied for watercore severity assessment. Higher than 95.0% accuracy was obtained for total samples in classifying sound apples from watercore groups using kNN, BPNN, SVM, and 1D CNN at a detection speed of 3 apples s ⁻¹ . Linear kernel SVM achieved the best classification accuracy of 96% for samples in the prediction set. Abstract . Watercore, an internal physiological disorder affecting apples, can be characterized by water-soaked, glassy regions near the fruit core. It is used as an indicator of full ripeness, storage suitability, and price of apples in many countries. Therefore, fast and non-destructive detection of watercore plays an important role in improving the commercial value of apples and reducing postharvest costs. In this study, an online visible/near-infrared (Vis/NIR) spectroscopy system was proposed for real-time detection of watercore in ‘Fuji’ apples (Malus pumila Mill.). A total of 318 samples harvested during harvest season in the same orchard were analyzed for both watercore severity index (WSI) and soluble solids content (SSC). According to the USDA watercore classification standard, all samples were classified into one of four classes (sound, slight, moderate, or severe) based on the affected area of watercore. Results showed that, although there was a positive correlation between spectral intensity and affected area of watercore, no significant relationship between affected area size and SSC could be obtained by Pearson test (correlation coefficient ~0.094). Generally, >95.0% accuracy was obtained for total samples at a detection speed of 3 apples s-1 in classifying sound from watercore groups using k-nearest neighbors (kNN) algorithm, back-propagation neural network (BPNN), support vector machine (SVM) classification, and one-dimensional convolutional neural network (1D-CNN). The best classification result was achieved by linear kernel SVM, with an accuracy of 96% for total samples. These classification algorithms showed preliminary feasibility for online screening of apples with watercore using Vis/NIR spectroscopy in industrial applications. Keywords: Apple watercore, Machine learning, Online detection, Vis/NIR spectroscopy, Watercore severity index.




Citations (4)


... Recently, visible and near-infrared spectroscopy (Vis-NIRS) technology has been widely applied in apple quality detection as a rapid, high-throughput, simple, and nondestructive testing method, achieving significant advances [18,19]. By studying the physiological disorders of watercore apples during long-term storage and their rapid detection methods, it is possible to promptly identify apples with disappearing sugar cores and internal browning (IB). ...

Reference:

Research Progress on Detection of Apple Watercore Based on Visible and Near-Infrared Spectroscopy
Non-Destructive Identification of Internal Watercore in Apples Based on Online Vis/NIR Spectroscopy
  • Citing Article
  • January 2020

Transactions of the ASABE (American Society of Agricultural and Biological Engineers)

... Best-fit classification models (100%) were developed using all wavelengths and spectra from images of face-up kernels and were marginally more accurate than models developed using images of kernels in face-down (98%), or pooled image (98%) orientations. The best-fit model using VNIR face-down images was more accurate than another study using the NIR region (980-1680 nm) that reported 88.2% accuracy [60]. This may be attributed to the hyperspectral images in this study collecting both spectral and spatial data and, therefore, allowing inspection of a greater kernel surface area in comparison with the NIR point method. ...

Assessment of Intact Macadamia Nut Internal Defects Using Near-Infrared Spectroscopy
  • Citing Conference Paper
  • January 2020

... However, two significant challenges remain. First, traditional approaches for building classification or predictive models based on Vis/NIR spectral data involve a cumbersome process of preprocessing combinations, wavelength selection, and classification methods to optimize model performance [11,13,17,[19][20][21]23]. The accuracy of models varies significantly depending on the chosen wavelength selection method, highlighting the need for a more streamlined and effective model construction approach. ...

On-line evaluation of watercore in apples by visible/near infrared spectroscopy
  • Citing Conference Paper
  • January 2019

... NIR equipment used on static and standardized samples (off-line analysis), as for monitoring Brix and Pol in the sugar mill laboratory [9], has been miniaturized for in-line monitoring of moving samples, finding diverse commercial applications such as in the fertilizer industry [10] and fruit quality monitoring [11][12][13]. In agriculture, in-line measurements are mainly observed in the scientific community, embedding sensors in the machinery for soil attribute characterization [14][15][16] and for grain and forage quality measurements on the harvesters [17][18][19]. ...

Effect of grain density to near infrared spectra and design of a laboratory evaluation system for combine harvester
  • Citing Conference Paper
  • January 2017