A novel algorithm for semi-automatic segmentation of plant leaf disease symptoms using digital image processing

Tropical Plant Pathology - Tập 41 Số 4 - Trang 210-224 - 2016
Jayme Garcia Arnal Barbedo1
1Embrapa Agricultural Informatics, Av. André Tosello, 209 - C.P. 6041, Campinas, SP, 13083-886, Brazil

Tóm tắt

Từ khóa


Tài liệu tham khảo

Barbedo JGA (2014) An automatic method to detect and measure leaf disease symptoms using digital image processing. Plant Dis 98:1709–1716

Bauriegel E, Giebel A, Geyer M, Schmidt U, Herppich WB (2011) Early detection of Fusarium infection in wheat using hyper-spectral imaging. Comput Electron Agric 75:304–312

Bock CH, Parker PE, Cook AZ, Gottwald TR (2008) Visual rating and the use of image analysis for assessing different symptoms of citrus canker on grapefruit leaves. Plant Dis 92:530–541

Bock CH, Parker PE, Cook AZ, Gottwald TR (2009) Automated image analysis of the severity of foliar citrus canker symptoms. Plant Dis 93:660–665

Bock CH, Poole G, Parker PE, Gottwald TR (2010) Plant disease severity estimated visually, by digital photography and image analysis, and by hyperspectral imaging. Crit Rev Plant Sci 29:59–107

Camargo A, Smith J (2009) An image-processing based algorithm to automatically identify plant disease visual symptoms. Biosyst Eng 102:9–21

Contreras-Medina LM, Osornio-Rios RA, Torres-Pacheco I, Romero-Troncoso RJ, Guevara-González RG, Millan-Almaraz JR (2012) Smart sensor for real-time quantification of common symptoms present in unhealthy plants. Sensors 12:784–805

Cui D, Zhang Q, Li M, Hartman GL, Zhao Y (2010) Image processing methods for quantitatively detecting soybean rust from multispectral images. Biosyst Eng 107:186–193

De Coninck BMA, Amand O, Delauré SL, Lucas S, Hias N, Weyens G, Mathys J, De Bruyne E, Cammue BPA (2012) The use of digital image analysis and real-time PCR fine-tunes bioassays for quantification of Cercospora leaf spot disease in sugar beet breeding. Plant Pathol 61:76–84

Gonzalez RC, Woods RE (2007) Digital image processing, 3rd edn. Prentice Hall

Grand-Brochier M, Vacavant A, Cerutti G, Bianchi K, Tougne L (2013) Comparative study of segmentation methods for tree leaves extraction. In: International Workshop on Video and Image Ground Truth in Computer Vision Applications, Proceedings… New York, 7 p

Huang KY (2007) Application of artificial neural network for detecting Phalaenopsis seedling diseases using color and texture features. Comput Electron Agric 57:3–11

Kwack MS, Kim EN, Lee H, Kim JW, Chun SC, Kim KD (2005) Digital image analysis to measure lesion area of cucumber anthracnose by Colletotrichum orbiculare. J Gen Plant Pathol 71:418–421

Lamari L (2002) ASSESS: image analysis software for plant disease quantification, 1st edn. APS Press, St. Paul

Lindow SE, Webb RR (1983) Quantification of foliar plant disease symptoms by microcomputer-digitized video image analysis. Phytopathology 73:520–524

Martin DP, Rybicki EP (1998) Microcomputer-based quantification of maize streak virus symptoms in Zea mays. Phytopathology 88:422–427

Nilsson HE (1980) Remote sensing and image processing for disease assessment. Prot Ecol 2:271–274

Nilsson HE (1995) Remote sensing and image analysis in plant pathology. Annu Rev Phytopathol 15:489–527

Ohta Y, Kanade T, Sakai T (1980) Color information for region segmentation. Comput Graphics Image Process 13:222–241

Olmstead JW, Lang GA, Grove GG (2001) Assessment of severity of powdery mildew infection of sweet cherry leaves by digital image analysis. HortSci 36:107–111

Patil SB, Bodhe SK (2011) Leaf disease severity measurement using image processing. Int J Eng Technol 3:297–301

Peñuelas J, Filella I (1998) Visible and near-infrared reflectance techniques for diagnosing plant physiological status. Trends Plant Sci 3:151–156

Pethybridge SJ, Nelson SC (2015) Leaf doctor: a New portable application for quantifying plant disease severity. Plant Dis 99:1310–1316

Prewitt J (1970) Object enhancement and extraction. In: Lipkin B, Rosenfeld A (eds) Picture processing and psychopictorics. Academic, New York, pp 75–149

Price TV, Osborne CF (1990) Computer imaging and its application to some problems in agriculture and plant science. Crit Rev Plant Sci 9:235–266

Ricker MD (2004) Pixels, bits, and GUIs: the fundamentals of digital imagery and their application by plant pathologists. Plant Dis 88:228–241

Steddom K, Jones D, Rudd J, Rush C (2005) Analysis of field plot images with segmentation analysis: effect of glare and shadows. Phytopathology 95:S99

Zhang M, Meng Q (2011) Automatic citrus canker detection from leaf images captured in field. Pattern Recogn Lett 32:2036–2046