Specifications
Brand Name :
KEYE
Model Number :
KVIS-GR
Certification :
No
Place of Origin :
China
MOQ :
1 SET
Price :
Negotiable
Payment Terms :
L/C, T/T
Delivery Time :
4 to 6 weeks
Packaging Details :
Fumigation-free wood
Item :
Rice Grain Quality Analyzer
Model.No :
KVIS-GR
Warranty :
1 Year
Condition :
New
Showr room :
USA
Feature :
Easy operate
Material :
Stainless 304 Food Grade
Speed :
900-1200pcs/min
MOQ :
1 Set
Payment :
T/T,L/C,Paypal,Credit card etc.
Description

Rice quality AI visual detector

The rice quality AI visual detector developed and produced by our company can replace manual labor and perform 7*24 hours of high-precision inspection of rice quality. Detect and analyze the normal grains,germinated grains, heterogeneous buds, grass seeds, chalky grains, insect-eaten grains, gibberella grains, large broken grains, small broken grains, black germ grains, impurities, etc. of rice, and form statistical reports from time to time to improve Product safety and traceability. The contact parts between the equipment and the sample are made of medical grade materials, which are safe and hygienic, with intelligent design, simple operation and convenient maintenance.

Key technology:

  • Automatic binarization: Use deep neural network to segment the foreground and background of the image, compared with the traditional binarization method, Automatic binarization can be applied to a variety of lighting conditions, and have the advantages of smoother edge of the rice segmentation, fast and robust High.
  • Adhesion rice segmentation algorithm: The connected domain-based method cannot segment adhesion rice. The deep neural network is used to segment the adhesion rice at an instance level, which can reach a speed of lOOOfps and can process the adhesion rice in real time.

The example diagram is as follows

AI Inspection Rice Grain Quality Analyzer with Stainless 304 Food Grade

  • Rice properties recognition algorithm: It adopts a lightweight neural network and integrates a semi-supervised learning method. The model can be iteratively optimized only by marking a small amount of data. It has the advantages of high accuracy, fast speed, and convenient deployment.

The detector combines traditional machine vision methods and artificial intelligence algorithms to analyze rice. First, traditional visual methods are used to segment the rice grains in the video frame, and then artificial intelligence algorithms are used to identify the attributes of the divided rice grains and judge Whether there are insect erosion, germination, mold and other problems. At the same time, two high-resolution cameras were used to photograph the front and back of the rice, and the properties of the two sides were analyzed. Through the algorithm, align the front and back of the rice one by one, and combine their respective attributes to synthesize the attributes of a complete rice.

Equipment advantages:

1. High accuracy, artificial intelligence AI detection, the error is controlled within 0.5%;

2. High efficiency, 3 minutes to complete the test, one set is equivalent to 3 workers;

3. Intelligent, three-dimensional, easy to operate, you can use it in 3 minutes;

4. Nano-visible, high-precision camera all-round detection 0.04mm recognition accuracy;

Equipment details&key technology

Model.No KVS-GR Inspect speed 900-1200/min
Size 800*600*600mm Weight 110kg
Voltage 220V±10%,50Hz Current 500-1000W
Ambient temperature 10~30℃ Environment humidity Relative temperature≤85%

1.Automatic binarization: Use deep neural network to segment the foreground and background of the image, compared with the traditional binarization method, Automatic binarization can be applied to a variety of lighting conditions, and have the advantages of smoother edge of the rice segmentation, fast and robust High.

2.Adhesion rice segmentation algorithm: The connected domain-based method cannot segment adhesion rice. The deep neural network is used to segment the adhesion rice at an instance level, which can reach a speed of l000fps and can process the adhesion rice in real time.

3.Rice properties recognition algorithm: It adopts a lightweight neural network and integrates a semi-supervised learning method. The model can be iteratively optimized only by marking a small amount of data. It has the advantages of high accuracy, fast speed, and convenient deployment.

Features of equipment

AI Inspection Rice Grain Quality Analyzer with Stainless 304 Food Grade

  • AI algorithm: high stability, adapting to the environment and background disturbance; different defect samples can be automatically identified after training
  • Dataization: Independent database, save multiple samples, analyze non-good products, and retain history
  • Multi-orientation: 360 ° comprehensive inside and outside the samples
  • High precision: detection accuracy can be high
  • Modularization, can flexibly increase or decrease the detection function according to customer actual needs
  • Easy to operate: It is easy to operate and easy to maintain
  • Safety: Medical grade material manufacturing, fully compliant with medical supplies production environment
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AI Inspection Rice Grain Quality Analyzer with Stainless 304 Food Grade

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Brand Name :
KEYE
Model Number :
KVIS-GR
Certification :
No
Place of Origin :
China
MOQ :
1 SET
Price :
Negotiable
Contact Supplier
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AI Inspection Rice Grain Quality Analyzer with Stainless 304 Food Grade
AI Inspection Rice Grain Quality Analyzer with Stainless 304 Food Grade
AI Inspection Rice Grain Quality Analyzer with Stainless 304 Food Grade
AI Inspection Rice Grain Quality Analyzer with Stainless 304 Food Grade

Anhui Keye Information & Technology Co., Ltd.

Site Member
4 Years
anhui, hefei
Since 2011
Business Type :
Manufacturer, Exporter, Seller
Total Annual :
100,000-150,000
Employee Number :
100~150
Certification Level :
Site Member
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