Non-Destructive Technologies for Detecting Insect Infestation in Fruits and Vegetables under Postharvest Conditions: A Critical Review
暂无分享,去创建一个
Kevin D Donohue | Ali Hamidisepehr | K. D. Donohue | Akinbode A Adedeji | Nader Ekramirad | Ahmed Rady | Raul T Villanueva | Chadwick A Parrish | Mengxing Li | Chadwick A. Parrish | A. Adedeji | A. Rady | Nader Ekramirad | Mengxing Li | R. Villanueva | Ali HamidiSepehr
[1] A. Mizrach,et al. Temporal and Spectral features of Sounds of wood-boring Beetle Larvae: Identifiable patterns of Activity enable improved discrimination from background noise , 2008 .
[2] Da-Wen Sun,et al. Hyperspectral imaging for food quality analysis and control , 2010 .
[3] H. Appel,et al. Plants respond to leaf vibrations caused by insect herbivore chewing , 2014, Oecologia.
[4] Iván Darío,et al. Estudio, aplicación y propuesta de automatización del procesamiento de imágenes por resonancia magnética para la evaluación y detección de defectos internos de calidad en cítricos y melocotones , 2011 .
[5] Automated Monitoring Using Acoustical Sensors for Insects in Farm-Stored Wheat , 1996 .
[6] D. Obeng‐ofori,et al. Review of the pest status, economic impact and management of fruit-infesting flies (Diptera: Tephritidae) in Africa , 2015 .
[7] P. Thomas,et al. Non-destructive detection of seed weevil-infested mango fruits by X-ray imaging , 1995 .
[8] Da-Wen Sun,et al. Innovative nondestructive imaging techniques for ripening and maturity of fruits – A review of recent applications , 2018 .
[9] Wei Wang,et al. Application of Near-Infrared Hyperspectral Imaging for Detection of External Insect Infestations on Jujube Fruit , 2016 .
[10] Michael J. McCarthy,et al. Assessment of pomegranate postharvest quality using nuclear magnetic resonance , 2013 .
[11] T. Schatzki,et al. DEFECT DETECTION IN APPLES BY MEANS OF X-RAY IMAGING , 1997 .
[12] Xiuqin Rao,et al. Detection of common defects on oranges using hyperspectral reflectance imaging , 2011 .
[13] Quansheng Chen,et al. Nondestructive detection of total volatile basic nitrogen (TVB-N) content in pork meat by integrating hyperspectral imaging and colorimetric sensor combined with a nonlinear data fusion , 2015 .
[14] Jacob Goldberger,et al. Automatic acoustic detection of the red palm weevil , 2008 .
[15] Zbigniew Ranachowski,et al. Influence of water activity on acoustic emission of flat extruded bread , 2007 .
[16] Reza Alimardani,et al. A Review of Non-Destructive Methods for Detection of Insect Infestation in Fruits and Vegetables , 2016 .
[17] Da-Wen Sun,et al. Recent Progress of Hyperspectral Imaging on Quality and Safety Inspection of Fruits and Vegetables: A Review. , 2015, Comprehensive reviews in food science and food safety.
[18] Ahmed M. Rady,et al. Pretreatment and Freezing Rate Effect on Physical, Microstructural, and Nutritional Properties of Fried Sweet Potato , 2019 .
[19] Danilo Monarca,et al. Feasibility of NIR spectroscopy to detect olive fruit infested by Bactrocera oleae , 2015 .
[20] R. Mankin,et al. Acoustic Activity Cycles of Rhynchophorus ferrugineus (Coleoptera: Dryophthoridae) Early Instars After Beauveria bassiana (Hypocreales: Clavicipitaceae) Treatments , 2017, Annals of the Entomological Society of America.
[21] T. C. Pearson,et al. An automatic algorithm for detection of infestations in X-ray images of agricultural products , 2007 .
[22] Mark S. Leeson,et al. Detection of Diseases and Volatile Discrimination of Plants: An Electronic Nose and Self-Organizing Maps Approach , 2011 .
[23] R. Mankin,et al. Acoustic Detection of Oryctes rhinoceros (Coleoptera: Scarabaeidae: Dynastinae) and Nasutitermes luzonicus (Isoptera: Termitidae) in Palm Trees in Urban Guam , 2010, Journal of economic entomology.
[24] T. Cox. THE ACOUSTIC EMISSIONS PRODUCED BY ESCHERICHIA COLI DURING THE GROWTH CYCLE , 2014 .
[25] Joe-Air Jiang,et al. Automatic X-ray quarantine scanner and pest infestation detector for agricultural products , 2011 .
[26] A Feasibility Study Using Simplified near Infrared Imaging to Detect Fruit Fly Larvae in Intact Fruit , 2011 .
[27] D. Mohapatra,et al. Bioacoustic detection of Callosobruchus chinensis and Callosobruchus maculatus in bulk stored chickpea (Cicer arietinum) and green gram (Vigna radiata) , 2019, Food Control.
[28] Natsuko Toyofuku,et al. X-ray detection of defects and contaminants in the food industry , 2008 .
[29] Renfu Lu,et al. Hyperspectral Imaging-Based Classification and Wavebands Selection for Internal Defect Detection of Pickling Cucumbers , 2013, Food and Bioprocess Technology.
[30] David C. Slaughter,et al. A Computerized Acoustical Larval Detection System , 1988 .
[31] Sergio Cubero,et al. Quality Evaluation of Citrus Fruits , 2016 .
[32] J. W. Armstrong,et al. Revised Irradiation Doses to Control Melon Fly, Mediterranean Fruit Fly, and Oriental Fruit Fly (Diptera: Tephritidae) and a Generic Dose for Tephritid Fruit Flies , 2004, Journal of economic entomology.
[33] Artur Zdunek,et al. EFFECT OF MANNITOL TREATMENT ON ULTRASOUND EMISSION DURING TEXTURE PROFILE ANALYSIS OF POTATO AND APPLE TISSUE , 2006 .
[34] Burks,et al. Measuring fig quality using near-infrared spectroscopy. , 2000, Journal of stored products research.
[35] Bahram Parvin,et al. Machine recognition of navel orange worm damage in x-ray images of pistachio nuts , 1995, Other Conferences.
[36] Huajian Liu,et al. A review of recent sensing technologies to detect invertebrates on crops , 2017, Precision Agriculture.
[37] Xiuqin Rao,et al. Firmness prediction and modeling by optimizing acoustic device for watermelons , 2016 .
[38] Michael P. Sama,et al. A Method for Reflectance Index Wavelength Selection from Moisture-Controlled Soil and Crop Residue Samples , 2017 .
[39] Charles E Taylor,et al. Automated species recognition of antbirds in a Mexican rainforest using hidden Markov models. , 2008, The Journal of the Acoustical Society of America.
[40] Hanping Mao,et al. Applications of Non-destructive Technologies for Agricultural and Food Products Quality Inspection , 2019, Sensors.
[41] Amots Hetzroni,et al. NOTE: Utilization of Sounding Methodology to Detect Infestation by Rhynchophorus ferrugineus on Palm Offshoots , 2003 .
[42] Bernd Hitzmann,et al. Measurement, Modeling and Automation in Advanced Food Processing , 2017 .
[43] Daniel E. Guyer,et al. Determining optimal wavebands using genetic algorithm for detection of internal insect infestation in tart cherry , 2008 .
[44] José Blasco,et al. Citrus sorting by identification of the most common defects using multispectral computer vision , 2007 .
[45] Michael Ngadi,et al. International Journal of Food Engineering 3-D Imaging of Deep-Fat Fried Chicken Nuggets Breading Coating Using X-Ray Micro-CT , 2011 .
[46] P. Pathmanaban,et al. Recent application of imaging techniques for fruit quality assessment , 2019 .
[47] Judith A. Abbott,et al. Changes in Sonic Resonance of ‘Delicious’ and ‘Golden Delicious’ Apples Undergoing Accelerated Ripening , 1994 .
[48] B. Nicolai,et al. MRI and x-ray CT study of spatial distribution of core breakdown in 'Conference' pears. , 2003, Magnetic resonance imaging.
[49] Fabiana Rodrigues Leta,et al. Applications of computer vision techniques in the agriculture and food industry: a review , 2012, European Food Research and Technology.
[50] Shintaroh Ohashi,et al. Detection of external insect infestations in jujube fruit using hyperspectral reflectance imaging , 2011 .
[51] Heping Zhu,et al. Plant Pest Detection Using an Artificial Nose System: A Review , 2018, Sensors.
[52] Fernando López-García,et al. Automatic detection of skin defects in citrus fruits using a multivariate image analysis approach , 2010 .
[53] S. Trdan,et al. Traditional and modern methods for the identification of thrips (Thysanoptera) species , 2012, Journal of Pest Science.
[54] Elizabeth A. Baldwin,et al. Electronic Noses and Tongues: Applications for the Food and Pharmaceutical Industries , 2011, Sensors.
[55] Somiahnadar Rajendran,et al. Detection of insect infestation in stored foods. , 2005, Advances in food and nutrition research.
[56] Yuzhen Lu,et al. Innovative Hyperspectral Imaging-Based Techniques for Quality Evaluation of Fruits and Vegetables: A Review , 2017 .
[57] Artur Zdunek,et al. Evaluation of apple texture with contact acoustic emission detector: A study on performance of calibration models , 2011 .
[58] Sontisuk Teerachaichayut,et al. Non-destructive quality assessment of hens’ eggs using hyperspectral images , 2017 .
[59] Ryohei Kanzaki,et al. Novel cell-based odorant sensor elements based on insect odorant receptors. , 2015, Biosensors & bioelectronics.
[60] M. Zorović,et al. Laser vibrometry as a diagnostic tool for detecting wood-boring beetle larvae , 2014, Journal of Pest Science.
[61] M. A. Doster,et al. Automated detection of pistachio defects by machine vision , 2001 .
[62] José Blasco,et al. Machine Vision-Based Measurement Systems for Fruit and Vegetable Quality Control in Postharvest. , 2017, Advances in biochemical engineering/biotechnology.
[63] Alexander Sutin,et al. Acoustic methods of invasive species detection in agriculture shipments , 2016, 2016 IEEE Symposium on Technologies for Homeland Security (HST).
[64] H T Nagle,et al. Acoustic Indicators for Targeted Detection of Stored Product and Urban Insect Pests by Inexpensive Infrared, Acoustic, and Vibrational Detection of Movement , 2010, Journal of economic entomology.
[65] K. Alagusundaram,et al. Quality analysis of mango fruit with fruit fly insect by non-destructive soft X-ray method. , 2015 .
[66] Noel D.G. White,et al. Identification of insect-damaged wheat kernels using short-wave near-infrared hyperspectral and digital colour imaging , 2010 .
[67] Neeraj Seth,et al. X-ray imaging methods for internal quality evaluation of agricultural produce , 2011, Journal of Food Science and Technology.
[68] G Bonifazi,et al. Early detection of toxigenic fungi on maize by hyperspectral imaging analysis. , 2010, International journal of food microbiology.
[69] M. Ngadi,et al. Microstructural characterization of deep-fat fried breaded chicken nuggets using X-ray micro-computed tomography , 2011 .
[70] Chun-Chieh Yang,et al. Development of multispectral imaging algorithm for detection of frass on mature red tomatoes , 2014 .
[71] A. Adedeji,et al. Hyperspectral imaging for detection of codling moth infestation in GoldRush apples , 2017 .
[72] Margarita Ruiz-Altisent,et al. Review: Sensors for product characterization and quality of specialty crops-A review , 2010 .
[73] I. Baldwin,et al. Olive fruits infested with olive fly larvae respond with an ethylene burst and the emission of specific volatiles. , 2016, Journal of integrative plant biology.
[74] S. Muszyński,et al. Extruded Bread Classification on the Basis of Acoustic Emission Signal With Application of Artificial Neural Networks , 2015 .
[75] Bo Zhou,et al. Discrimination of different types damage of rice plants by electronic nose , 2011 .
[76] Danilo Monarca,et al. Nondestructive detection of insect infested chestnuts based on NIR spectroscopy , 2014 .
[77] A. Zdunek,et al. CRISPNESS AND CRUNCHINESS JUDGMENT OF APPLES BASED ON CONTACT ACOUSTIC EMISSION , 2010 .
[78] Digvir S. Jayas,et al. Applications of Thermal Imaging in Agriculture - A Review , 2005 .
[79] D. Pimentel,et al. Update on the environmental and economic costs associated with alien-invasive species in the United States , 2005 .
[80] Bahareh Jamshidi,et al. Ability of near-infrared spectroscopy for non-destructive detection of internal insect infestation in fruits: Meta-analysis of spectral ranges and optical measurement modes. , 2020, Spectrochimica acta. Part A, Molecular and biomolecular spectroscopy.
[81] Georg Siegmund,et al. Targeting the Limits of Laser Doppler Vibrometry , 2005 .
[82] Ron P. Haff,et al. Potential Postharvest Use of Radiography to Detect Internal Pests in Deciduous Tree Fruits , 2005 .
[83] Emil W. Ciurczak,et al. Handbook of Near-Infrared Analysis , 1992 .
[84] R. Mankin,et al. Acoustic Detection of Melolonthine Larvae in Australian Sugarcane , 2009, Journal of economic entomology.
[85] S. N. Omkar,et al. Rule extraction for classification of acoustic emission signals using Ant Colony Optimisation , 2008, Eng. Appl. Artif. Intell..
[86] A. Sim,et al. Invariant representation and hierarchical network for inspection of nuts from X-ray images , 1996, Int. J. Imaging Syst. Technol..
[87] Hong Sun,et al. Research on Pest Image Processing Method Based on Android Thermal Infrared Lens , 2018 .
[88] Habib Ammari,et al. An Introduction to Mathematics of Emerging Biomedical Imaging , 2008 .
[89] Floyd E. Dowell,et al. Comparison of Three near Infrared Spectrophotometers for Infestation Detection in Wild Blueberries Using Multivariate Calibration Models , 2009 .
[90] L. Khriji,et al. X-ray Imaging of Stored Dates to Detect Infestation by Saw-Toothed Beetles , 2016 .
[91] Daniel Cozzolino,et al. Instrumental methods (spectroscopy, electronic nose, and tongue) as tools to predict taste and aroma in beverages: advantages and limitations. , 2013, Chemical reviews.
[92] Frans van den Berg,et al. Process Analytical Technology in the food industry , 2013 .
[93] J. Blasco,et al. Recent Advances and Applications of Hyperspectral Imaging for Fruit and Vegetable Quality Assessment , 2012, Food and Bioprocess Technology.
[94] A. Mahmoudi,et al. Pattern recognition-based optical technique for non-destructive detection of Ectomyelois ceratoniae infestation in pomegranates during hidden activity of the larvae. , 2019, Spectrochimica acta. Part A, Molecular and biomolecular spectroscopy.
[95] Joe-Air Jiang,et al. An adaptive image segmentation algorithm for X-ray quarantine inspection of selected fruits , 2008 .
[96] V. Chelladurai,et al. Detection of Callosobruchus maculatus (F.) infestation in soybean using soft X-ray and NIR hyperspectral imaging techniques , 2014 .
[97] J. Qin,et al. Detection of citrus canker using hyperspectral reflectance imaging with spectral information divergence , 2009 .
[98] Pictiaw Chen,et al. A review of non-destructive methods for quality evaluation and sorting of agricultural products , 1991 .
[99] Abbas Hemmat,et al. Multi-sensor data fusion in the nondestructive measurement of kiwifruit texture , 2017 .
[100] Tomoyuki Haishi,et al. Rapid Detection of Infestation of Apple Fruits by the Peach Fruit Moth, Carposina sasakii Matsumura, Larvae Using a 0.2-T Dedicated Magnetic Resonance Imaging Apparatus , 2011, Applied magnetic resonance.
[101] Wenxiu Pan,et al. Feasibility study on nondestructively sensing meat's freshness using light scattering imaging technique. , 2016, Meat science.
[102] Long Xue,et al. Detecting System of Crop Disease Stress Based on Acoustic Emission and Virtual Technology , 2014 .
[103] Luxi Meng. Acoustic Emission of Lactococcus lactis ssp. lactis C2 Infected with Three Bacteriophages c2, sk1 and ml3 , 2016 .
[104] A. Adedeji,et al. Assessing different processed meats for adulterants using visible-near-infrared spectroscopy. , 2018, Meat science.
[105] Min Zhang,et al. Detection of insect-damaged vegetable soybeans using hyperspectral transmittance image , 2013 .
[106] Majid Nazeri,et al. Selecting optimal wavelengths for detection of insect infested tomatoes based on SIMCA-aided CFS algorithm , 2017 .
[107] Sumio Kawano,et al. Automatic image analysis and spot classification for detection of fruit fly infestation in hyperspectral images of mangoes , 2013 .
[108] R. Haff,et al. Detection of Fruit-fly Infestation in Olives using X-Ray Imaging: Algorithm Development and Prospects , 2016 .
[109] J. Gómez-Sanchís,et al. Advances in Machine Vision Applications for Automatic Inspection and Quality Evaluation of Fruits and Vegetables , 2011 .
[110] Qibing Zhu,et al. Automatic threshold method and optimal wavelength selection for insect-damaged vegetable soybean detection using hyperspectral images , 2014 .
[111] Hailong Peng,et al. Rapid detection and classification of citrus fruits infestation by Bactrocera dorsalis (Hendel) based on electronic nose , 2019, Postharvest Biology and Technology.
[112] Steven A. Weier,et al. Effects of feed moisture and extruder screw speed and temperature on physical characteristics and antioxidant activity of extruded proso millet ( Panicum miliaceum ) flour , 2016 .
[113] Artur Zdunek,et al. ACOUSTIC EMISSION IN INVESTIGATION OF PLANT TISSUE MICRO-CRACKING , 2004 .
[114] W. C. Hoffmann,et al. Identification of Stink Bugs Using an Electronic Nose , 2008 .
[115] Zhuojun Jiang,et al. Advances in Electronic Nose Development for Application to Agricultural Products , 2019, Food Analytical Methods.
[116] R. E. Nylund,et al. Separation of hollow heart potato tubers by means of size grading, specific gravity, and x-ray examination , 1950, American Potato Journal.
[117] M. Teresa.,et al. Transmisión óptica e imagen en visible e infrarrojo en frutas : ensayo de equipos comerciales , 2011 .
[118] Alessandro Torricelli,et al. Nondestructive measurement of fruit and vegetable quality. , 2014, Annual review of food science and technology.
[119] K. J. Hsia,et al. Future Trends of Bioinspired Smell and Taste Sensors , 2015 .
[120] M. A. Khan,et al. Machine vision system: a tool for quality inspection of food and agricultural products , 2012, Journal of Food Science and Technology.
[121] M. Kubát. An Introduction to Machine Learning , 2017, Springer International Publishing.
[122] C. Pasquini. Near Infrared Spectroscopy: fundamentals, practical aspects and analytical applications , 2003 .
[123] Wang Yingkuan. Computer Vision Technology for Food Quality Evaluation , 2009 .
[124] M. Gidley,et al. Complexity and health functionality of plant cell wall fibers from fruits and vegetables , 2017, Critical reviews in food science and nutrition.
[125] S. Rothberg,et al. Pseudo-vibration sensitivities for commercial laser vibrometers , 2011 .
[126] Rakesh Kumar Sharma,et al. Non-destructive Quality Monitoring of Fresh Fruits and Vegetables , 2017 .
[127] Jun Wang,et al. Detection of age and insect damage incurred by wheat, with an electronic nose , 2007 .
[128] Shannon E. Stitzel,et al. Cross-reactive chemical sensor arrays. , 2000, Chemical reviews.
[129] V. Chelladurai,et al. Detection of infestation by Callosobruchus maculatus in mung bean using near-infrared hyperspectral imaging , 2013 .
[130] Shintaroh Ohashi,et al. Comparison of different modes of visible and near-infrared spectroscopy for detecting internal insect infestation in jujubes , 2010 .
[132] J. Stencel,et al. Acoustic Emission Signal of Lactococcus lactis before and after Inhibition with NaN 3 and Infection with Bacteriophage c2 , 2013, ISRN microbiology.
[133] Dong Yu,et al. Recent progresses in deep learning based acoustic models , 2017, IEEE/CAA Journal of Automatica Sinica.
[134] R. Mankin,et al. Acoustic Indicators for Mapping Infestation Probabilities of Soil Invertebrates , 2007, Journal of economic entomology.
[135] A. Adedeji,et al. Application of Acoustic Emission and Machine Learning to Detect Codling Moth Infested Apples , 2018 .
[136] José Blasco,et al. Recognition and classification of external skin damage in citrus fruits using multispectral data and morphological features , 2009 .
[137] Panmanas Sirisomboon,et al. Study on non-destructive evaluation methods for defect pods for green soybean processing by near-infrared spectroscopy. , 2009 .
[138] Amy Roda,et al. Perspective and Promise: a Century of Insect Acoustic Detection and Monitoring , 2011 .
[139] Morteza Mahmoudi,et al. Themed Issue: Chemical and Biological Detection Chemical Society Reviews Optical Sensor Arrays for Chemical Sensing: the Optoelectronic Nose , 2022 .
[140] José Blasco,et al. Computer vision detection of peel defects in citrus by means of a region oriented segmentation algorithm , 2007 .