The invention relates to a method and a 
system for identifying the white-leg 
shrimp disease on the basis of 
machine vision. The method comprises the following steps of: S1, judging whether an image is an image of a target to be subjected to 
disease identification, entering the step S2 if judging that the image is the image of the target to be subjected to 
disease identification, and stopping a program if judging that the image is not the image of the target to be subjected to disease identification; S2, extracting a color 
feature parameter of the image; S3, carrying out 
binary segmentation processing on the image; S4, extracting an area feature of the image which is subjected to 
binary segmentation processing, and calculating the number of pixel points in a target region; S5, carrying out 
edge detection processing on the image which is subjected to 
binary segmentation processing to obtain an edge image of the target region, then extracting a perimeter feature of the edge image and obtaining the number of pixels in a target 
edge region; S6, obtaining a circularity 
feature parameter by utilizing a ratio of the perimeter to the area of the target region; and S7, obtaining a disease identification result by training the color 
feature parameter and the circularity feature parameter which are used as training parameters and categorical data sources of a 
neural network classification algorithm and then classifying the color feature parameter and the circularity feature parameter.