PHYSICALLY UNCLONABLE STRUCTURAL-COLOR ANTI-COUNTERFEITING LABEL WITH ARTIFICIAL INTELLIGENCE AUTHENTICATION
20210091964 ยท 2021-03-25
Inventors
- Jinming Zhou (Shijiazhuang, CN)
- Xueying He (Shijiazhuang, CN)
- Yanan Gu (Shijiazhuang, CN)
- Heling Zhu (Shijiazhuang, CN)
Cpc classification
H04L2209/56
ELECTRICITY
H04L2209/12
ELECTRICITY
International classification
H04L9/32
ELECTRICITY
Abstract
The invention discloses a physically unclonable structural-color anti-counterfeiting label with artificial intelligence (AI) authentication, which is formed by doping micron-sized particles into disorderedly arranged monodisperse submicron-sized particles and coating onto a black substrate; alternatively, by doping micron-sized particles and black nanoparticles into disorderedly arranged monodisperse submicron-sized particles and coating onto a substrate. The disordered arrangement of monodisperse submicron-sized microspheres has a special effect on light to make the anti-counterfeiting label show a specific structural color. AI is used to learn the anti-counterfeiting label images obtained from an optical microscope and memorize their structural characteristics to form an anti-counterfeiting label database. The optical microscope images of the anti-counterfeiting labels taken by end users or in any circulation links are sent to the database to compare with structural characteristics in the database, and a similarity value is fed back by AI to realize the function of anti-counterfeiting and authenticity verification.
Claims
1. A physically unclonable structural-color anti-counterfeiting label with artificial intelligence (AI) authentication, wherein the anti-counterfeiting label is formed by randomly doping micron-sized microspheres into disorderedly arranged monodisperse submicron-sized microspheres and coating onto a black substrate to form a pattern; alternatively, by randomly doping micron-sized microspheres and black nanoparticles into monodisperse submicron-sized microspheres and coating onto a substrate to form a pattern.
2. The anti-counterfeiting label according to claim 1, wherein the micron-sized microspheres are selected from one or a mixture of more of polymer microspheres, metal oxide microspheres and carbon spheres.
3. The anti-counterfeiting label according to claim 2, wherein the micron-sized microspheres are selected from one or a mixture of two or more of polystyrene microspheres, starch microspheres, albumin microspheres, gelatin microspheres, chitosan microspheres, silica microspheres, alumina microspheres, zinc oxide microspheres, ferroferric oxide microspheres, manganese dioxide microspheres, and titanium dioxide microspheres, with a size ranging from 1 m to 50 m.
4. The anti-counterfeiting label according to claim 1, wherein surfaces of the micron-sized microspheres are wrapped or partially covered by monodisperse submicron-sized particles.
5. The anti-counterfeiting label according to claim 1, wherein the monodisperse submicron-sized microspheres are selected from one of polymer colloidal microspheres, metal oxide colloidal microspheres, metal sulfides, metal colloidal microsphere and elementary substance colloidal microspheres.
6. The anti-counterfeiting label according to claim 5, wherein the monodisperse micron-sized microspheres are selected from one of styrene colloidal microspheres, polymethyl methacrylate colloidal microspheres, polystyrene-polymethyl methacrylate-polyacrylic acid colloidal microspheres, silica colloidal microspheres, titanium dioxide colloidal microspheres, ferric sulfide colloidal microspheres, gold colloidal microspheres, ferroferric oxide colloidal microspheres, copper oxide colloidal microspheres, sulfur colloidal microsphere, gold colloidal microspheres and silver colloidal microspheres, with a size ranging from 150 nm to 1000 nm.
7. The anti-counterfeiting label according to claim 1, wherein the black nanoparticles are selected from one of carbon black nanoparticles, ferroferric oxide nanoparticles, dopamine nanoparticles, melanin nanoparticles, graphene nanosheets, carbon nanotubes, and metal particles, with a size ranging from 5 nm to 100 nm, and a mass fraction accounting for 0.1%-2% of the monodisperse submicron microspheres.
8. The anti-counterfeiting label according to claim 1, wherein a mass fraction of the micron-sized microspheres accounts for 5%-50% of the monodisperse submicron microspheres.
9. The anti-counterfeiting label according to claim 1, wherein a spectral range corresponding to the structural colors ranges from 390 nm to 800 nm, covering the whole visible light region.
10. A method for verifying the anti-counterfeiting label according to claim 1, wherein firstly characteristics of disordered optical structures in images from optical microscopes are deep-learned and memorized by AI to form a genuine product database; secondly the label structures captured by the optical microscopes in a commodity circulation link are transmitted to the AI database for authentication by AI; and thirdly authenticity is verified according to similarity.
Description
BRIEF DESCRIPTION OF THE DRAWING
[0015]
[0016]
[0017]
DETAILED DESCRIPTION
Example 1
[0018] To an emulsion containing monodisperse polystyrene-polymethyl methacrylate-polyacrylic acid colloidal microspheres with a particle size of 210 nm and a mass fraction of 10%, was added silica microspheres with a mass fraction accounting for 20% of the monodisperse microspheres and a particle size of 10 m, ultrasonic dispersion was carried out, the emulsion was sprayed onto a black substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a butterfly-pattern, which consisted of disordered optical structure (
Example 2
[0019] To an emulsion containing monodisperse styrene colloidal microspheres with a particle size of 150 nm and a mass fraction of 10%, was added gelatin microspheres with a mass fraction accounting for 50% of the monodisperse microspheres and a particle size of 50 m, ultrasonic dispersion was carried out, the emulsion was sprayed onto a black substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a alphabets-pattern, which consisted of disordered optical structure (
Example 3
[0020] To an emulsion containing monodisperse polystyrene microspheres with a particle size of 180 nm and a mass fraction of 20%, was added starch microspheres with a mass fraction accounting for 30% of the monodisperse microspheres and a particle size of 10 m, ultrasonic dispersion was carried out, the emulsion was sprayed onto a black substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a numbers-pattern, which consisted of disordered optical structure (
Example 4
[0021] To an emulsion containing monodisperse polystyrene microspheres with a particle size of 250 nm and a mass fraction of 20%, was added starch microspheres with a mass fraction accounting for 30% of the monodisperse microspheres and a particle size of 1 m, ultrasonic dispersion was carried out, the emulsion was sprayed onto a black substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a barcode-pattern, which consisted of disordered optical structure (
Example 5
[0022] To an emulsion containing monodisperse polymethyl methacrylate microspheres with a particle size of 225 nm and a mass fraction of 20%, was added chitosan microspheres with a mass fraction accounting for 30% of the monodisperse microspheres and a particle size of 10 m, ultrasonic dispersion was carried out, the emulsion was sprayed onto a black substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a barcode-pattern, which consisted of disordered optical structure. A reflection spectrum of the anti-counterfeiting label had a reflection peak at 545 nm (
Example 6
[0023] To an emulsion containing monodisperse silica colloidal microspheres with a particle size of 120 nm and a mass fraction of 20%, was added alumina microspheres with a mass fraction accounting for 30% of the monodisperse microspheres and a particle size of 20 m, ultrasonic dispersion was carried out, the emulsion was sprayed onto a black substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a barcode-pattern, which consisted of disordered optical structure. The anti-counterfeiting label was purple, with the alumina microspheres distributed in the anti-counterfeiting label in a disordered and random manner. A reflection spectrum of the anti-counterfeiting label had a reflection peak at 390 nm. Images from the optical microscope were input into AI for learning and memorizing characteristics to form a database, the images from the optical microscope after changing the shooting environment were input into the database, and the result was judged to be true when a similarity value of the system was greater than 0.99.
Example 7
[0024] To an emulsion containing monodisperse gold colloidal microspheres with a particle size of 1000 nm and a mass fraction of 20%, was added zinc oxide microspheres with a mass fraction accounting for 30% of the monodisperse microspheres and a particle size of 30 m, ultrasonic dispersion was carried out, the emulsion was sprayed onto a black substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a triangle-pattern, which consisted of disordered optical structure. The anti-counterfeiting label was red, with the zinc oxide microspheres distributed in the anti-counterfeiting label in a disordered and random manner. A reflection spectrum of the anti-counterfeiting label had a reflection peak at 800 nm. Images from the optical microscope were input into AI for learning and memorizing characteristics to form a database, the images from the optical microscope after changing the shooting environment were input into the database, and the result was judged to be true when a similarity value of the system was greater than 0.99.
Example 8
[0025] To an emulsion containing monodisperse ferroferric oxide colloidal microspheres with a particle size of 250 nm and a mass fraction of 20%, was added ferroferric oxide microspheres with a mass fraction accounting for 30% of the monodisperse microspheres and a particle size of 40 m, ultrasonic dispersion was carried out, the emulsion was sprayed onto a black substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a triangle-pattern, which consisted of disordered optical structure. The anti-counterfeiting label was red, with ferric oxide microspheres distributed in the anti-counterfeiting label in a disordered and random manner. A reflection spectrum of the anti-counterfeiting label had a reflection peak at 630 nm. Images from the optical microscope were input into AI for learning and memorizing characteristics to form a database, the images from the optical microscope after changing the shooting environment were input into the database, and the result was judged to be true when a similarity value of the system was greater than 0.99.
Example 9
[0026] To an emulsion containing monodisperse copper oxide colloidal microspheres with a particle size of 250 nm and a mass fraction of 20%, was added manganese dioxide and zinc oxide microspheres (at a mass ratio of 1:1) with a mass fraction accounting for 30% of the monodisperse microspheres and a particle size of 50 m, ultrasonic dispersion was carried out, the emulsion was sprayed onto a black substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a triangle-pattern, which consisted of disordered optical structure. The anti-counterfeiting label was red, with manganese oxide microspheres and the mixed zinc oxide microspheres distributed in the anti-counterfeiting label in a disordered and random manner. A reflection spectrum of the anti-counterfeiting label had a reflection peak at 630 nm. Images from the optical microscope were input into AI for learning and memorizing characteristics to form a database, the images from the optical microscope after changing the shooting environment were input into the database, and the result was judged to be true when a similarity value of the system was greater than 0.99.
Example 10
[0027] To an emulsion containing monodisperse sulfur colloidal microspheres with a particle size of 250 nm and a mass fraction of 20%, was added manganese dioxide microspheres with a mass fraction accounting for 30% of the monodisperse microspheres and a particle size of 10 m, ultrasonic dispersion was carried out, the emulsion was sprayed onto a black substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a triangle-pattern, which consisted of disordered optical structure. The anti-counterfeiting label was red, with manganese oxide microspheres distributed in the anti-counterfeiting label in a disordered and random manner. A reflection spectrum of the anti-counterfeiting label had a reflection peak at 630 nm. Images from the optical microscope were input into AI for learning and memorizing characteristics to form a database, the images from the optical microscope after changing the shooting environment were input into the database, and the result was judged to be true when a similarity value of the system was greater than 0.99.
Example 11
[0028] To an emulsion containing monodisperse titanium dioxide colloidal microspheres with a particle size of 250 nm and a mass fraction of 20%, was added manganese oxide, zinc oxide and gelatin microspheres (at a mass ratio of 1:1:1) with a mass fraction accounting for 30% of the monodisperse microspheres and a particle size of 10 m, ultrasonic dispersion was carried out, the emulsion was sprayed onto a black substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a triangle-pattern, which consisted of disordered optical structure. The anti-counterfeiting label was red, with the mixed microspheres distributed in the anti-counterfeiting label in a disordered and random manner. A reflection spectrum of the anti-counterfeiting label had a reflection peak at 630 nm. Images from the optical microscope were input into AI for learning and memorizing characteristics to form a database, the images from the optical microscope after changing the shooting environment were input into the database, and the result was judged to be true when a similarity value of the system was greater than 0.99.
Example 12
[0029] To an emulsion containing monodisperse polystyrene colloidal microspheres with a particle size of 250 nm and a mass fraction of 20%, was added titanium dioxide microspheres (at a mass ratio of 1:1:1) with a mass fraction accounting for 5% of the monodisperse microspheres and a particle size of 10 m, ultrasonic dispersion was carried out, the emulsion was sprayed onto a black substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a triangle-pattern, which consisted of disordered optical structure. The anti-counterfeiting label was red, with albumin microspheres distributed in the anti-counterfeiting label in a disordered and random manner. A reflection spectrum of the anti-counterfeiting label had a reflection peak at 630 nm. Images from the optical microscope were input into AI for learning and memorizing characteristics to form a database, the images from the optical microscope after changing the shooting environment were input into the database, and the result was judged to be true when a similarity value of the system was greater than 0.99.
Example 13
[0030] To an emulsion containing monodisperse polystyrene colloidal microspheres with a particle size of 250 nm and a mass fraction of 20%, was added polystyrene microspheres (at a mass ratio of 1:1:1) with a mass fraction accounting for 30% of the monodisperse microspheres and a particle size of 10 m and carbon black nanoparticles with a mass fraction accounting for 0.1% of the monodisperse microspheres and a particle size of 5 nm, ultrasonic dispersion was carried out, the emulsion was sprayed onto a substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a triangle-pattern, which consisted of disordered optical structure. The anti-counterfeiting label was red, with albumin microspheres distributed in the anti-counterfeiting label in a disordered and random manner. A reflection spectrum of the anti-counterfeiting label had a reflection peak at 630 nm. Images from the optical microscope were input into AI for learning and memorizing characteristics to form a database, the images from the optical microscope after changing the shooting environment were input into the database, and the result was judged to be true when a similarity value of the system was greater than 0.99.
Example 14
[0031] To an emulsion containing monodisperse polystyrene colloidal microspheres with a particle size of 250 nm and a mass fraction of 20%, was added albumin microspheres (at a mass ratio of 1:1:1) with a mass fraction accounting for 30% of the monodisperse microspheres and a particle size of 10 m and ferroferric oxide nanoparticles with a mass fraction accounting for 2% of the monodisperse microspheres and a particle size of 100 nm, ultrasonic dispersion was carried out, the emulsion was sprayed onto a substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a triangle-pattern, which consisted of disordered optical structure. The anti-counterfeiting label was red, with carbon microspheres distributed in the anti-counterfeiting label in a disordered and random manner. A reflection spectrum of the anti-counterfeiting label had a reflection peak at 630 nm. Images from the optical microscope were input into AI for learning and memorizing characteristics to form a database, the images from the optical microscope after changing the shooting environment were input into the database, and the result was judged to be true when a similarity value of the system was greater than 0.99.
Example 15
[0032] To an emulsion containing monodisperse silver colloidal microspheres with a particle size of 250 nm and a mass fraction of 20%, was added ferroferric oxide microspheres (at a mass ratio of 1:1:1) with a mass fraction accounting for 30% of the monodisperse microspheres and a particle size of 10 m and dopamine nanoparticles with a mass fraction accounting for 1% of the monodisperse microspheres and a particle size of 10 nm, ultrasonic dispersion was carried out, the emulsion was sprayed onto a substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a triangle-pattern, which consisted of disordered optical structure. The anti-counterfeiting label was red, with albumin microspheres distributed in the anti-counterfeiting label in a disordered and random manner. A reflection spectrum of the anti-counterfeiting label had a reflection peak at 630 nm. Images from the optical microscope were input into AI for learning and memorizing characteristics to form a database, the images from the optical microscope after changing the shooting environment were input into the database, and the result was judged to be true when a similarity value of the system was greater than 0.99.
Example 16
[0033] To an emulsion containing monodisperse polystyrene colloidal microspheres with a particle size of 250 nm and a mass fraction of 20%, was added albumin microspheres (at a mass ratio of 1:1:1) with a mass fraction accounting for 30% of the monodisperse microspheres and a particle size of 10 m and melanin nanoparticles with a mass fraction accounting for 2% of the monodisperse microspheres and a particle size of 20 nm, ultrasonic dispersion was carried out, the emulsion was sprayed onto a substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a triangle-pattern, which consisted of disordered optical structure. The anti-counterfeiting label was red, with the albumin microspheres distributed in the anti-counterfeiting label in a disordered and random manner. A reflection spectrum of the anti-counterfeiting label had a reflection peak at 630 nm. Images from the optical microscope were input into AI for learning and memorizing characteristics to form a database, the images from the optical microscope after changing the shooting environment were input into the database, and the result was judged to be true when a similarity value of the system was greater than 0.99.
Example 17
[0034] To an emulsion containing monodisperse ferric sulfide colloidal microspheres with a particle size of 250 nm and a mass fraction of 20%, was added albumin microspheres (at a mass ratio of 1:1:1) with a mass fraction accounting for 30% of the monodisperse microspheres and a particle size of 10 m and graphene nanosheets with a mass fraction accounting for 2% of the monodisperse microspheres and a particle size of 100 nm, ultrasonic dispersion was carried out, the emulsion was sprayed onto a substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a triangle-pattern, which consisted of disordered optical structure. The anti-counterfeiting label was red, with the albumin microspheres distributed in the anti-counterfeiting label in a disordered and random manner. A reflection spectrum of the anti-counterfeiting label had a reflection peak at 630 nm. Images from the optical microscope were input into AI for learning and memorizing characteristics to form a database, the images from the optical microscope after changing the shooting environment were input into the database, and the result was judged to be true when a similarity value of the system was greater than 0.99.
Example 18
[0035] To an emulsion containing monodisperse polystyrene colloidal microspheres with a particle size of 250 nm and a mass fraction of 20%, was added alumina (at a mass ratio of 1:1:1) with a mass fraction accounting for 30% of the monodisperse microspheres and a particle size of 10 m and carbon nanotubes with a mass fraction accounting for 2% of the monodisperse microspheres and a particle size of 100 nm, ultrasonic dispersion was carried out, the emulsion was sprayed onto a substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a triangle-pattern, which consisted of disordered optical structure. The anti-counterfeiting label was red, with albumin microspheres distributed in the anti-counterfeiting label in a disordered and random manner. A reflection spectrum of the anti-counterfeiting label had a reflection peak at 630 nm. Images from the optical microscope were input into AI for learning and memorizing characteristics to form a database, the images from the optical microscope after changing the shooting environment were input into the database, and the result was judged to be true when a similarity value of the system was greater than 0.99.
Example 19
[0036] To an emulsion containing monodisperse gold colloidal microspheres with a particle size of 250 nm and a mass fraction of 20%, was added manganese dioxide (at a mass ratio of 1:1:1) with a mass fraction accounting for 30% of the monodisperse microspheres and a particle size of 10 m and silver nanoparticles with a mass fraction accounting for 2% of the monodisperse microspheres and a particle size of 100 nm, ultrasonic dispersion was carried out, the emulsion was sprayed onto a substrate and dried to obtain a non-iridescent structure colors anti-counterfeiting label with a triangle-pattern, which consisted of disordered optical structure. The anti-counterfeiting label was red, with albumin microspheres distributed in the anti-counterfeiting label in a disordered and random manner. A reflection spectrum of the anti-counterfeiting label had a reflection peak at 630 nm. Images from the optical microscope were input into AI for learning and memorizing characteristics to form a database, the images from the optical microscope after changing the shooting environment were input into the database, and the result was judged to be true when a similarity value of the system was greater than 0.99.