Grain moisture content detecting method based on hyperspectral image technology

A hyperspectral image, moisture content technology, applied in color/spectral characteristic measurement, biological neural network model, etc., can solve the problems of time-consuming, laborious, grain destructive, insufficient stability, etc., to improve detection efficiency and stabilize the method. Effect

Inactive Publication Date: 2011-04-27
ZHEJIANG UNIV
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AI Technical Summary

Problems solved by technology

These methods have high detection accuracy and are suitable for laboratory detection, but they are time-consuming and laborious, and have certain destructive effects on grain particles, so rapid online detection cannot be realized
Some other detection methods, such as capacitance method, acoustic method, nuclear magnetic resonance method, neutron moisture meter, etc., either have insufficient stability or are expensive and difficult to promote.

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  • Grain moisture content detecting method based on hyperspectral image technology
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  • Grain moisture content detecting method based on hyperspectral image technology

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Embodiment Construction

[0029] The present invention will be further described below in conjunction with drawings and embodiments.

[0030] Such as figure 1 As shown, the hyperspectral image acquisition device includes a camera 1 , a spectrometer 2 , a sample 3 , a stage 4 , a computer 5 , a light source 6 , and a delivery device 7 . Camera 1, spectrometer 2, light source 6, sample 3, and object stage 4 are discharged in sequence from top to bottom, camera 1 is connected to spectrometer 2, camera 1 is connected to computer 5 through a cable, and object stage 4 is installed on the conveying device 7 , the sample 3 is placed on the stage 4.

[0031] Detection of corn and wheat moisture:

[0032] 1) Acquisition of calibration images: cover the lens cap and collect two hyperspectral calibration images using a standard whiteboard respectively, as the all-black calibration image B and the all-white calibration image W, which will be used for subsequent hyperspectral data image correction.

[0033] 2) Ac...

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Abstract

The invention discloses a grain moisture content detecting method based on a hyperspectral image technology, which comprises the following steps: respectively acquiring an all black calibrated image B, an all white calibrated image W and a hyperspectral original data image I of grains the moisture content of which is given; carrying out reflection spectral correction on the hyperspectral original data image I of grains by the all black calibrated image B and the all white calibrated image W to obtain a corrected image R of grains; extracting the grain image from the corrected image R; carrying out spectral correction by a moving average method and multiplicative scatter correction; calculating the correlation coefficients of spectral reflection values and the moisture content; selecting a correlation coefficient as the maximum spectral reflection value to be input into an artificial neural network; and establishing a grain moisture prediction model. In the invention, the grain moisture content is detected by the artificial neural network according to the spectral signature of the grains caused by the moisture content, a quick stable method is provided, and the detecting efficiency is improved.

Description

technical field [0001] The invention relates to a method for detecting moisture content of grain grains based on hyperspectral image technology. Background technique [0002] The moisture content of grain grains is one of the important factors to determine its storage conditions. In actual production, a suitable production process is generally adopted. The grain grains are threshed and then sent to the drying tower. After preheating, drying, slowing down, and cooling to room temperature, After reaching a safe moisture content of about 14%, it is discharged from the drying tower. In this process, the online detection and control of grain moisture is the core technology that restricts the grain drying system; [0003] The traditional grain moisture detection mostly removes the moisture in the grain directly by drying or chemical methods, and detects the absolute moisture content of the sample. Among them, drying methods mainly include electric oven method, decompression meth...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01N21/25G06N3/02
Inventor 饶秀勤苏忆楠应义斌李江波
Owner ZHEJIANG UNIV
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