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1 Adaptive Automata and Grammars Prof. Dr. Hemerson Pistori INOVISAO – R&D&I Group - Biotechnology Department Dom Bosco Catholic University (UCDB) Campo Grande, MS, Brazil November, 2011 Bristol, UK

Adaptive Automata and Grammars Prof. Dr. Hemerson Pistori

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Adaptive Automata and Grammars Prof. Dr. Hemerson Pistori INOVISAO – R&D&I Group - Biotechnology Department Dom Bosco Catholic University (UCDB) Campo Grande, MS, Brazil November , 2011 Bristol, UK. Topics. INOVISAO Projects Adaptive Devices – A Brief History Adaptive Automata - PowerPoint PPT Presentation

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Page 1: Adaptive Automata and Grammars Prof. Dr. Hemerson Pistori

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Adaptive Automata and Grammars

Prof. Dr. Hemerson Pistori

INOVISAO – R&D&I Group - Biotechnology DepartmentDom Bosco Catholic University (UCDB)

Campo Grande, MS, Brazil

November, 2011 Bristol, UK

Page 2: Adaptive Automata and Grammars Prof. Dr. Hemerson Pistori

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Topics

INOVISAO Projects Adaptive Devices – A Brief History Adaptive Automata Adaptive Grammars Final Remarks

Page 3: Adaptive Automata and Grammars Prof. Dr. Hemerson Pistori

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Where we are

Blue Lake Cave - Bonito

Pantanal – Largest Wetland in World

Page 4: Adaptive Automata and Grammars Prof. Dr. Hemerson Pistori

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INOVISAO Projects in a Glance

Measuring eating habits of the weevil for bamboo species selection

Identification of Honey Origin from images of pollens

Bovine leather classificationLarvae mortality rate calculation for testing new insecticides

Yeast viability calculation for fermentation process control

Page 5: Adaptive Automata and Grammars Prof. Dr. Hemerson Pistori

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INOVISAO Projects in a Glance

Mice behaviour analysis in lab. experiments

Page 6: Adaptive Automata and Grammars Prof. Dr. Hemerson Pistori

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INOVISAO – Some Contributions

Simulated Annealing + SVM (Paper) Particle Filters with Self-Adjustable Observation

Models (Paper) Leather Classification System (Patent) Mice Behaviour Analysis System (Patent Pend.) Lots of combinations and experimental parameter

tuning of existing techniques (pre-processing, segmentation, feature extraction, feature selection, tracking, supervised learning) to solve real life problems

Page 7: Adaptive Automata and Grammars Prof. Dr. Hemerson Pistori

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Adaptive Devices - History Line

1969

1990

1995

2000

2003

RecognizersGenerators

Two-level grammars (Wijngaarden)

Extensible Grammars (Wegbreit)

Dynamic Templates (Mason)

Generative Grammars (Christiansen)

Adaptive Automata (Neto)Modifiable Grammars (Burshteyn)

Evolving Grammars (Cabasino)

Recursive Adaptable Grammars (Shutt)

Dynamic Grammars (Boullier)

Adaptive Devices (Neto)

Meta_S Grammars (Jackson)

Adaptive Decision Trees(Pistor)

Adaptive FSA (Pistori)

Self-Modifying Finite State Automata (Shutt)

Adaptive Grammars (Iwai)

Page 8: Adaptive Automata and Grammars Prof. Dr. Hemerson Pistori

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Adaptive Automata for anbncn (non CF lang.)

a

a

b c

a

b cb c

Example - Input String: aaabbbccc

a

b cb cb c

Adaptive Layer

Subjacent Device

Page 9: Adaptive Automata and Grammars Prof. Dr. Hemerson Pistori

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Adaptools

Page 10: Adaptive Automata and Grammars Prof. Dr. Hemerson Pistori

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Adaptive Grammars

P= {S → aSb,S → ε }

Subjacent Device:Production rules in place ofTransitions and States

F

Adaptive Level:Search and replace productionrules patterns as symbolsare generated

Page 11: Adaptive Automata and Grammars Prof. Dr. Hemerson Pistori

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Final Remarks

Few works applying Grammar Learning Techniques to Computer Vision problems

Adaptive Automata and Grammars are virtually unknown outside the Automata and Formal Language community

Inducing a formal representation (like a grammar or an automaton) of a language from a set of exemplar strings is machine learning (AFL community is constantly developing new ML algorithms)

Visual information may be prone to standard and non-standard grammatical representations (E.g: Sign Language Grammars)

Main broad goal during my Sabbatical Leave: investigate new interfaces between computer vision, formal language, machine learning and adaptive devices.

Page 12: Adaptive Automata and Grammars Prof. Dr. Hemerson Pistori

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For more information

- www . gpec. ucdb. br / pistori - pistori @ ucdb . br

Thanks !