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35point5 Technology
A New DimensionA New Dimension inin Discovering Friends OnlineDiscovering Friends Online
How Does The System Work ?
The user uploads the personal information and the favorite person’s visual and audio preferences
How Does the System Work ?
Gathering Information From The User – 1/2
How Does the System Work ?
Gathering Information From The User – 2/2
The user selects favored images from a photo database which also includes celebrities.
How Does the System Work ?
Analyzing User Data (Determining the priority of Social and Physical Preferences)
SOCIAL
PREFERENCES
% 40
%100
%0
SOCIAL PREFERENCES
PHYSICAL
PREFERENCES
% 60
PHYSICAL PREFERENCES
The user determines Social and Physical preferences before compiling a detailed profile.
How Does the System Work ?
Analyzing Physical Preferences
FACE
% 40
%100
%0
FACE
Priority criteria for face, hair color, skin tone, eye color features of favored physical criteria are used.
PREFERENCES
Pink Fair Olive Brown VariousFreckledFair Freckled
FACE
% 40
SKIN TONE
SKIN TONE
% 40
FACE
FreckledFair
How Does the System Work ?
Analyzing Physical Preferences
%100
%0
Priority criteria for face, hair color, skin tone, eye color features of favored physical criteria are used.
PREFERENCES
Black Brown Auburn Strawberry
Blonde
Dark Blonde Light Blonde VariousStrawberry
Blonde
Dark Blonde
FACE
% 40
SKIN TONE
% 40
FACE
NATURAL
HAIR COLOR
% 15
SKIN TONE
NATURAL HAIR COLOR
Strawberry
Blonde
Dark BlondeFreckledFair
How Does the System Work ?
Analyzing Physical Preferences
%100
%0
Priority criteria for face, hair color, skin tone, eye color features of favored physical criteria are used.
PREFERENCES
VariousBlackBrownHazelGreenBlue
FACE
% 40
SKIN TONE
% 40
FACE
NATURAL
HAIR COLOR
% 15
SKIN TONE
EYE COLOR
NATURAL HAIR COLOR
EYE COLOR
% 5
Strawberry
Blonde
Dark Blonde
HazelGreen
HazelGreenFreckledFair
How Does the System Work ?
Analyzing Physical Preferences
%100
%0
Priority criteria for face, hair color, skin tone, eye color features of favored physical criteria are used.
How Does the System Work ?
Analyzing User Data
The user selects the facial features he/she favors most.
How Does the System Work ?
Analyzing User Data
The system analyzes received data and creates information about physical properties of the favored person.
How Does the System Work ?
Analyzing User Data
DATABASE
101010110010010010101
The system then analyzes visual data per anotomic facial ratios.
CANDIDATES’ DATABASE
How Does the System Work ?
Searching the Database
The System then searches for suitable candidates from its database.
The user is able to view the search results using the listied criteria. Also, the system can display the search
results based on the candidate’s permission to view personal information.
For example, the user can sort search results according to the most favored candidate’s skin tone or can sort the
list by how much the candidate favors him or her.
How Does the System Work ?
Searching the Database
She favors you: % 90
You favor her: % 85
She favors you: % 85
You favor her: % 90
She favors you: % 80
You favor her: % 75
She favors you: % 75
You favor her: % 80
Search Results
How Does the System Work ?
Users Choice
The user then selects the appropriate person to meet.
How Does the System Work ?
Sharing Contact Information
Following the candidate’s approval, the system shares contact information between the user and the chosen
candidate.
THANK YOU

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35point5 Technology

  • 1. 35point5 Technology A New DimensionA New Dimension inin Discovering Friends OnlineDiscovering Friends Online
  • 2. How Does The System Work ?
  • 3. The user uploads the personal information and the favorite person’s visual and audio preferences How Does the System Work ? Gathering Information From The User – 1/2
  • 4. How Does the System Work ? Gathering Information From The User – 2/2 The user selects favored images from a photo database which also includes celebrities.
  • 5. How Does the System Work ? Analyzing User Data (Determining the priority of Social and Physical Preferences) SOCIAL PREFERENCES % 40 %100 %0 SOCIAL PREFERENCES PHYSICAL PREFERENCES % 60 PHYSICAL PREFERENCES The user determines Social and Physical preferences before compiling a detailed profile.
  • 6. How Does the System Work ? Analyzing Physical Preferences FACE % 40 %100 %0 FACE Priority criteria for face, hair color, skin tone, eye color features of favored physical criteria are used.
  • 7. PREFERENCES Pink Fair Olive Brown VariousFreckledFair Freckled FACE % 40 SKIN TONE SKIN TONE % 40 FACE FreckledFair How Does the System Work ? Analyzing Physical Preferences %100 %0 Priority criteria for face, hair color, skin tone, eye color features of favored physical criteria are used.
  • 8. PREFERENCES Black Brown Auburn Strawberry Blonde Dark Blonde Light Blonde VariousStrawberry Blonde Dark Blonde FACE % 40 SKIN TONE % 40 FACE NATURAL HAIR COLOR % 15 SKIN TONE NATURAL HAIR COLOR Strawberry Blonde Dark BlondeFreckledFair How Does the System Work ? Analyzing Physical Preferences %100 %0 Priority criteria for face, hair color, skin tone, eye color features of favored physical criteria are used.
  • 9. PREFERENCES VariousBlackBrownHazelGreenBlue FACE % 40 SKIN TONE % 40 FACE NATURAL HAIR COLOR % 15 SKIN TONE EYE COLOR NATURAL HAIR COLOR EYE COLOR % 5 Strawberry Blonde Dark Blonde HazelGreen HazelGreenFreckledFair How Does the System Work ? Analyzing Physical Preferences %100 %0 Priority criteria for face, hair color, skin tone, eye color features of favored physical criteria are used.
  • 10. How Does the System Work ? Analyzing User Data The user selects the facial features he/she favors most.
  • 11. How Does the System Work ? Analyzing User Data The system analyzes received data and creates information about physical properties of the favored person.
  • 12. How Does the System Work ? Analyzing User Data DATABASE 101010110010010010101 The system then analyzes visual data per anotomic facial ratios.
  • 13. CANDIDATES’ DATABASE How Does the System Work ? Searching the Database The System then searches for suitable candidates from its database.
  • 14. The user is able to view the search results using the listied criteria. Also, the system can display the search results based on the candidate’s permission to view personal information. For example, the user can sort search results according to the most favored candidate’s skin tone or can sort the list by how much the candidate favors him or her. How Does the System Work ? Searching the Database She favors you: % 90 You favor her: % 85 She favors you: % 85 You favor her: % 90 She favors you: % 80 You favor her: % 75 She favors you: % 75 You favor her: % 80 Search Results
  • 15. How Does the System Work ? Users Choice The user then selects the appropriate person to meet.
  • 16. How Does the System Work ? Sharing Contact Information Following the candidate’s approval, the system shares contact information between the user and the chosen candidate.