Discrimination of clods and stones from potatoes using laser backscattering imaging technique

Abstract Discrimination of clods and stones from potatoes remains to be a prevalent problem unsolved effectively. In this study, we proposed a new method based on laser backscattering imaging (LBI) to distinguish clods and stones from potatoes. An online LBI system was built to capture images and discrimination algorithm based on various features was developed thereafter. Regarding the scattering line width as the specific feature, the width threshold at each wavelength was optimized based for optimal classification on Youden Index. The receiver operating characteristics (ROC) curves and area under the curve (AUC) were employed to evaluate the classification results with the implementation of scattering line widths. The overall accuracy rates of discrimination were all above 92% by scattering line width features at 650, 685, 780, 808, 830 and 850 nm. Furthermore, scattering profiles derived from captured images were fitted by six parameters of Lorentzian distribution (LD) and exponential distribution (ED) functions, where fitting parameters were selected as features and implemented into the linear discriminant analysis (LDA) to calculate the probability of being potatoes. Results showed improved accuracy rates of over 98% at 780, 830 and 850 nm by fitting parameter features. Additionally, 850 nm was found to be the most significant wavelength according to separation results, ROC curves and AUC. This study demonstrated that LBI technique coupled with proposed features was accurate and promising for discriminating clods and stones from potatoes automatically.

[1]  Siti Khairunniza Bejo,et al.  Quality evaluation of watermelon using laser-induced backscattering imaging during storage , 2017 .

[2]  N. Perkins,et al.  Optimal Cut-point and Its Corresponding Youden Index to Discriminate Individuals Using Pooled Blood Samples , 2005, Epidemiology.

[3]  A. G. Story,et al.  Sorting Potatoes from Stones and Soil Clods by Infrared Reflectance , 1973 .

[4]  J. Dennis,et al.  Derivative free analogues of the Levenberg-Marquardt and Gauss algorithms for nonlinear least squares approximation , 1971 .

[5]  Mahmoud Omid,et al.  Analysis of texture-based features for predicting mechanical properties of horticultural products by laser light backscattering imaging , 2013 .

[6]  Manuela Zude,et al.  Non-destructive analyses of apple quality parameters by means of laser-induced light backscattering imaging , 2008 .

[7]  Takashi Kataoka,et al.  An image processing algorithm for detecting in-line potato tubers without singulation , 2010 .

[8]  Yud-Ren Chen,et al.  Machine vision technology for agricultural applications , 2002 .

[9]  José Blasco,et al.  Early decay detection in citrus fruit using laser-light backscattering imaging , 2013 .

[10]  M. B. McGechan An investigation into the damage sustained by different varieties of potatoes during riddling to remove soil. , 1980 .

[11]  Marcus Nagle,et al.  Laser-based imaging system for non-invasive monitoring of quality changes of papaya during drying , 2014 .

[12]  R. Singh,et al.  Design and development of potato grader. , 1990 .

[13]  Klaus Gottschalk,et al.  An Approach for Monitoring the Moisture Content Changes of Drying Banana Slices with Laser Light Backscattering Imaging , 2008 .

[14]  Ron Feller,et al.  Development of a Clod Separator for Potato Packing Houses , 1985 .

[15]  Tom Fawcett,et al.  An introduction to ROC analysis , 2006, Pattern Recognit. Lett..

[16]  Hiroshi Okamoto,et al.  Detection of potato tubers using an ultraviolet imaging-based machine vision system , 2010 .

[17]  Manuela Zude,et al.  An approach for monitoring the chilling injury appearance in bananas by means of backscattering imaging , 2013 .

[18]  Umezuruike Linus Opara,et al.  Estimating blueberry mechanical properties based on random frog selected hyperspectral data , 2015 .

[19]  Ron Feller,et al.  Absorbing stone impact to enable separation from potatoes , 1986 .

[20]  Manuela Zude,et al.  Spectral shift as advanced index for fruit chlorophyll breakdown , 2014, Food and Bioprocess Technology.

[21]  R. Lu Multispectral imaging for predicting firmness and soluble solids content of apple fruit , 2004 .

[22]  José Blasco,et al.  Laser-light backscattering imaging for early decay detection in citrus fruit using both a statistical and a physical model , 2015 .

[23]  Timothy C Irwin,et al.  A principled approach to setting optimal diagnostic thresholds: where ROC and indifference curves meet. , 2011, European journal of internal medicine.

[24]  T. Marique,et al.  Image Segmentation and Bruise Identification on Potatoes Using a Kohonen's Self-Organizing Map , 2005 .

[25]  M. B. McGechan An investigation into the relative effectiveness of various riddling motions for removal of soil from potatoes , 1977 .

[26]  D. C. McRae A review of developments in potato handling and grading , 1985 .

[27]  Christopher S. Lynch,et al.  Mechanics of Materials and Mechanics of Materials , 1996 .

[28]  D. C. McRae,et al.  Sieving Control and Horizontal Agitation of Potato Harvester Chains , 1986 .

[29]  R. Tweddell,et al.  Management of potato dry rot , 2013 .

[30]  R. Real,et al.  AUC: a misleading measure of the performance of predictive distribution models , 2008 .

[31]  K. Zaheer,et al.  Potato Production, Usage, and Nutrition—A Review , 2016, Critical reviews in food science and nutrition.

[32]  Hiroshi Okamoto,et al.  Discrimination between potato tubers and clods by detecting the significant wavebands , 2008 .

[33]  M. Geyer,et al.  Non-Destructive Evaluation of Edible Coatings Effects on Keeping Quality of European Plums (Prunus domestica L.) by Laser Light Backscattering Imaging , 2018, Erwerbs-Obstbau.

[34]  X. Li,et al.  The Nonlinear Least Squares Fits of Asymmetric Gaussian Model Functions: A Method for Reducing Noise in MODIS LAI Time-series Data , 2006, 2006 IEEE International Symposium on Geoscience and Remote Sensing.

[35]  Tom Fawcett,et al.  Analysis and Visualization of Classifier Performance: Comparison under Imprecise Class and Cost Distributions , 1997, KDD.

[36]  Kaveh Mollazade,et al.  Changes of backscattering imaging parameter during plum fruit development on the tree and during storage , 2016 .

[37]  V. Mcglone,et al.  Kiwifruit Firmness by near Infrared Light Scattering , 1997 .

[38]  Enrique F Schisterman,et al.  Youden Index and the optimal threshold for markers with mass at zero , 2008, Statistics in medicine.

[39]  Manuela Zude,et al.  Predicting soluble solid content and firmness in apple fruit by means of laser light backscattering image analysis , 2007 .

[40]  A. Thybo,et al.  The influence of mechanical impact and storage conditions on subsurface hardening in pre-peeled potatoes (Solanum tuberosum L.) , 2002, Potato Research.

[41]  C. Davis Lasers and Electro-optics: Fundamentals and Engineering , 1996 .