Hyperspectral Reflectance Imaging for Detecting Typical Defects of Durum Kernel Surface
暂无分享,去创建一个
Kai Fan | Fang Cheng | Feng-Nong Chen | Pu-Lan Chen | F. Cheng | Fengnong Chen | Kai Fan | Pu-lan Chen
[1] Daniel E. Guyer,et al. Near-infrared hyperspectral reflectance imaging for detection of bruises on pickling cucumbers , 2006, Computers and Electronics in Agriculture.
[2] Marian Wiwart,et al. Identification of hybrids of spelt and wheat and their parental forms using shape and color descriptors , 2012 .
[3] Josse De Baerdemaeker,et al. Hyperspectral waveband selection for on-line measurement of grain cleanness , 2009 .
[4] John Chambers,et al. Detection of Grain Weevils inside Single Wheat Kernels by a Very near Infrared Two-Wavelength Model , 1999 .
[5] Yoshino Tatsuo,et al. Classified denoising method for laser point cloud data of stored grain bulk surface based on discrete wavelet threshold , 2016 .
[6] Songyot Nakariyakul,et al. Classification of internally damaged almond nuts using hyperspectral imagery , 2011 .
[7] Noel D.G. White,et al. Identification of insect-damaged wheat kernels using short-wave near-infrared hyperspectral and digital colour imaging , 2010 .
[8] Neeraj Seth,et al. X-ray imaging methods for internal quality evaluation of agricultural produce , 2011, Journal of Food Science and Technology.
[9] G Bonifazi,et al. Early detection of toxigenic fungi on maize by hyperspectral imaging analysis. , 2010, International journal of food microbiology.
[10] Argiro E. Maganioti,et al. Principal component analysis of the P600 waveform: RF and gender effects , 2010, Neuroscience Letters.
[11] Digvir S. Jayas,et al. Classification of cereal grains using machine vision: I. Morphology models. , 2000 .
[12] Digvir S. Jayas,et al. CLASSIFICATION OF CEREAL GRAINS USING MACHINE VISION: IV. COMBINED MORPHOLOGY, COLOR, AND TEXTURE MODELS , 2000 .
[13] Hamid Tavakolipour,et al. International Journal of Food Engineering Neural Network Approaches for Prediction of Pistachio Drying Kinetics , 2012 .
[14] Stephen R. Delwiche,et al. Multiple view image analysis of freefalling U.S. wheat grains for damage assessment , 2013 .
[15] D. Jayas,et al. Identification of wheat classes using wavelet features from near infrared hyperspectral images of bulk samples. , 2009 .
[16] Z. Emam-djomeh,et al. Physical Properties of Whole Rye Seed (Secale cereal) , 2012 .
[17] Heesung Kwon,et al. Kernel Spectral Matched Filter for Hyperspectral Imagery , 2007, International Journal of Computer Vision.
[18] Digvir S. Jayas,et al. CLASSIFICATION OF CEREAL GRAINS USING MACHINE VISION: III. TEXTURE MODELS , 2000 .
[19] Corinna Cortes,et al. Support-Vector Networks , 1995, Machine Learning.
[20] J J Hopfield,et al. Neural networks and physical systems with emergent collective computational abilities. , 1982, Proceedings of the National Academy of Sciences of the United States of America.
[21] V. Bellon-Maurel,et al. Determining Vitreousness of Durum Wheat Kernels Using near Infrared Hyperspectral Imaging , 2006 .
[22] D. Jayas,et al. Classification of cereal grains using wavelet, morphological, colour, and textural features of non-touching kernel images , 2008 .
[23] Amber M. Hupp,et al. Evaluation of single and multi-feedstock biodiesel – diesel blends using GCMS and chemometric methods , 2016 .
[24] Moon S. Kim,et al. Hyperspectral imaging for detection of scab in wheat , 2000, SPIE Optics East.
[25] Samir Majumdar,et al. Classification of cereal grains using machine vision , 1997 .
[26] Gianfranco Venora,et al. Quality assessment of durum wheat storage centres in Sicily: Evaluation of vitreous, starchy and shrunken kernels using an image analysis system , 2009 .
[27] M. Ghahderijani,et al. Analysis of physicochemical and thermo-mechanical characteristics of Iranian black seed (Nigella oxypetala Boiss) , 2012 .