Qiuying Zhou’s research while affiliated with Shenyang Agricultural University and other places

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Publications (1)


Grading Method of Crop Disease Based on Image Processing
  • Conference Paper

October 2011

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47 Reads

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21 Citations

IFIP Advances in Information and Communication Technology

Youwen Tian

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Lide Wang

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Qiuying Zhou

At present, in the crop disease harm degree is graded mainly by measure with the eye or paper cut primarily, which is greatly influenced by subjective factors, and results in obvious error. For improvement on identification precision of crop disease, this paper developed a new crop disease grading method based on computer image processing. Image preprocessing, segmentation and statistical calculation were applied effectively in this study. According to crop disease harm degree and classification standard, the crop disease harm degree was determined by computing the proportion of sickness spot area and the normal area on the leaf. The experiment results indicated that the identification accuracy was greatly improved, the grading time and costs is reduced by the manual evaluation, providing accurate data for the study of the crop’s other aspects and has a broad prospect for application.

Citations (1)


... In the field of machine vision, various texture analysis methods, such as identifying pixel positions based on their brightness distribution [13], depend on statistical processing. These methods examine the patterns within this distribution, extracting features such as individual pixel details (considering single points) or more complex attributes involving pixel relationships (considering slopes and ridges) [14]. ...

Reference:

Iron Deficiency Diagnosis Using Combined FMM-based Features and SVM on Lemon Leaf Images
Grading Method of Crop Disease Based on Image Processing
  • Citing Conference Paper
  • October 2011

IFIP Advances in Information and Communication Technology