首页 /研究 /An artificial neural network approach to identify fungal diseases of cucumber (<i>Cucumis sativus</i>L.) plants using digital image processing
LEARNING

An artificial neural network approach to identify fungal diseases of cucumber (<i>Cucumis sativus</i>L.) plants using digital image processing

Keyvan Asefpour Vakilian, Jafar Massah

发表年份
2013
引用次数
49

摘要

Nowadays, artificial intelligence solutions such as digital image processing and artificial neural networks (ANN) have become important applicable techniques in phytomonitoring and plant health detection systems. In this research, an autonomous device was designed and developed for detecting two types of fungi (Pseudoperonospora cubensis, Sphaerotheca fuliginea) that infect the cucumber (Cucumis sativus L.) plant leaves. This device was able to recognise the fungal diseases of plants by detecting their symptoms on plant leaves (downy mildew and powdery mildew). For leaves of cucumber inoculated with different spores of the fungi, it was possible to estimate the amount of hour post inoculation (HPI) by extracting leaves’ image parameters. Device included a dark chamber, a CCD digital camera, a thermal camera, a light dependent resistor lightening module and a personal computer. The proposed programme for precise disease detection was based on an image processing algorithm and ANN. Three textural features and two thermal parameters from the obtained images were measured and normalised. Performance of ANN model was tested successfully for disease recognition and detecting HPI in images using back-propagation supervised learning method and inspection data. Such this machine vision system can be used in robotic intelligent systems to achieve a modern farmer’s assistant in agricultural crop fields.

关键词

Downy mildewPseudoperonospora cubensisCucumisPowdery mildewArtificial neural networkBiologyArtificial intelligenceDigital imagePlant diseaseImage processing

相关论文

查看 LEARNING 分类全部论文