01 - Introduction
About the project
- choose a topic and make a software on it
- you’re allowed to get any software as long as you modify enough
- not forks, or forks + some other features
- you must know all the topics in the syllabus
Definition
- biometrics refers to the study and use of methods for detect and measure the characteristics of living organisms and draw comparatively classifications and laws
- in CS: automatic identification or verification of the identity of a person based on physical or behavioral characteristics
- identification: who are you
- verification: what prove that you are who you declare
- Biometric Consortium: automatic recognition of a person according to discriminative characteristics
- in CS: automatic identification or verification of the identity of a person based on physical or behavioral characteristics
What they does
- biometric system are special systems that do pattern recognition
- pattern recognition is at the basis on many topics, like computer vision
- pattern recognition is a special model that reads information that is necessary to summarize the characteristics of some objects (features)
- when we have features we can measure the distance between two objects (or class of objects) and see if they are enough similar
- problems:
- what is a good distance measure
- quick, easy to calculate
- we compute the difference between the two similarities
- which are the best features
- must be able to distinguish between two objects belonging to the same class
- they’re good only if the can distinguish
- what is the difference margin to accept
- it is a margin of uncertainty to agree that two objects are similar
- what is a good distance measure
Classies and patterns
We distinguish between classies and pattern in several ways:
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content based image retrieval
- classies: type of objects
- pattern: any kind of features that allow to distinguish between a face and a flower
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Recognition
- classies: subclasses of same type
- pattern: allows to distinguis a subclass
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Biometrics
- classies: individuals
- pattern: allows to distinguish among individuals
Uniqueness of a person
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basic assumption: each person is unique
- it’s true, but we all share a lot of similiarities (features)
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main issues
- determine the unique features able to identify a person
- find reliable techniques to measure such features
- devise reliable algorithms to recognize/classify a person according to the measured features