Unstructured feature differentiation method based on multi-intelligence fusion
An unstructured and intelligent technology, applied in image analysis, color/spectral characteristic measurement, image data processing, etc., can solve the problem of low accuracy of identification results of traditional Chinese medicine, single characteristics of medicinal materials, and poor extraction of shape and texture features. problems, to broaden the dimension and scale of identification, improve accuracy, and solve the effects of difficult identification
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Embodiment 1
[0028] Using ultra-large-scale feedback neural network pattern intelligent recognition technology to extract and analyze the shape, texture, and surface vector features of medicinal materials.
[0029] (1) Take 20 pieces of dried licorice decoction pieces, and use a camera to obtain images. The image is binarized to clearly reflect the target from the background. Denoise the binarized image, extract the feature vector and then classify it.
[0030] (2) The binarization processing operation process in step (1) is: set the threshold T, the pixel group greater than T takes the value 1, and the pixel group smaller than T takes the value 0. The binarization function is as follows:
[0031]
[0032] (3) In step (1), use the following statement to remove noise: x4=medfilt2(x3,[10,10])
[0033] (4) Step (1) is graded according to the following criteria:
[0034] Table 1 Sample color characteristic value standard
[0035] Herb Grade
Saturation (sat...
Embodiment 2
[0039] An array gas signal sensor is used to extract and analyze the vector characteristics of the odor components of medicinal materials.
[0040] (1) Take 20 dried licorice pieces, grind them into powder and pass through a No. 2 sieve, take 1.0 g of sample powder, put it in a 20 mL headspace sampler, and place it in an array-type intelligent signal extraction system. Set the shaking time to 300s, and the lowest shaking temperature to 35°C. The odor recognition model of licorice decoction pieces was established by principal component analysis (PCA).
[0041] (2) In step (1), the PCA analysis method can be obtained as figure 1 analysis chart. Area 1 in the figure is the odor range of first-class licorice decoction pieces, area 2 is the odor range of second-class licorice decoction pieces, and area 3 is the odor range of a sample. The size of the distance of each area in the figure reflects the closeness of each smell, so it can be judged that the sample is a second-class pr...
Embodiment 3
[0043] The complex component multi-channel discrimination intelligent system is used to extract and analyze the vector characteristics of the taste components of medicinal materials.
[0044] (1) Take 20 pieces of dried licorice decoction pieces, powder them through a No. 3 sieve, take 1.0g of sample powder in a 250mL conical flask, add 80mL of water, soak for 30min, heat and reflux for 1h, let cool, filter, take 20mL of the filtrate and put it in a complex Component multi-channel discrimination and analysis intelligent system. The taste recognition model of licorice decoction pieces was established by principal component analysis (PCA).
[0045] (2) In step (1), the PCA analysis method can be obtained as figure 2 analysis chart. Area 1 in the figure is the taste range of first-class licorice decoction pieces, area 2 is the taste range of second-class licorice decoction pieces, and area 3 is the taste range of a sample. The size of the distance between each area in the fig...
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