CODE | 60279 |
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ACADEMIC YEAR | 2020/2021 |
CREDITS |
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SCIENTIFIC DISCIPLINARY SECTOR | ING-INF/03 |
LANGUAGE | English |
TEACHING LOCATION |
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SEMESTER | 1° Semester |
TEACHING MATERIALS | AULAWEB |
This course aims at provining to the Master student basic and advanced concepts on the design of methods and techniques for data driven self-awareness in autonomous artificial agents . Signal Processing, Data Fusion and Machine learning under a Bayesian pespective will be the key dimensions on which introduced concepts will be described. Laboratory application and agent design will integrate course theoretical activities
The course aims at providing theory and techniques for architectural and functional design of interactive cognitive dynamic systems. Topics are related to data fusion, mutilevel bayesian state estimation and their application to cognitive video and radio domains. Project based learning allows students to acquire design capabilities in the field.
-Basic and advanced knowledge on design of telecommunication systems frameworks for context-aware multisensorial processing of signals and data in cognitive agents
- Knowledge on methods and techniques for acquisition, joint representaion and processing of proprioreceptive and exteroreceptive multisensorial signals in cognitive dynamic agents (e.g. semi autonomous&autonomous vehicles like drones, cars, robots) cognitive radios, etc.)
- Knowledge on methods and techniques for Multisensor Data Fusion: coupled hierarchical processing of multisensorial signals. Machine learning for data driven driven experience based learning of Dynamic Generative Fusion models from sequences of multdimensional sensorial data.
- Knowledge on Machine Learning methods and techniques based on Cognitive Dynamic Systems theory for Situation awareness and Self awareness in artificial cognitive agents
- Knowledge and capabilities on case studies: design of Self Awareness frameowrk for autonomous systems (dataset on cars robots and drones, cognitive radios)
- Knowledge and capabilities to use and apply: multisensorial signal processing tools and algorithms for acquisition, experience driven machine learning techniques for estimation of Generative multisensorial Bayesian hierarchical models. Bayesian Inference on learned Generative Models for dynamic state estimation, prediction and anomaly detection of interaction between agent and its contextual environment situation .
Probability theory, Random Processes, Signal theory
Lessons for sharing knowledge
Laboratory lessons to reinforce and assess capabilities
Applying knowledge and understanding in lab
Making Judgements:
Learning and communications skills:
Conference style oral slide presentation
- A. R. Damasio, Looking for Spinoza: Joy, Sorrow, and the Feeling Brain, 1st ed. Orlando: Harcourt, 2003. [Online]. Available:http://lccn.loc.gov/2002011347
- S. Haykin, Cognitive Dynamic Systems: Perception-action Cycle, Radar and Radio, ser. Cognitive Dynamic Systems: Perception–action Cycle, Radar, and Radio. Cambridge University Press, 2012.
- P. R. Lewis, M. Platzner, B. Rinner, J. Torresen, and X. Yao, Eds., Selfaware Computing Systems: An Engineering Approach. Springer, 2016.
S. Haykin, Cognitive Dynamic Systems: Perception-action Cycle, Radar and Radio, ser. Cognitive Dynamic Systems: Perception–action Cycle, Radar, and Radio. Cambridge University Press, 2012.
- P. R. Lewis, M. Platzner, B. Rinner, J. Torresen, and X. Yao, Eds., Selfaware Computing Systems: An Engineering Approach. Springer, 2016.
- K. J. Friston, B. Sengupta, and G. Auletta, “Cognitive dynamics: From attractors to active inference,” Proceedings of the IEEE, vol. 102, no. 4, pp. 427–445, 2014. [Online]. Available:
https://doi.org/10.1109/JPROC.2014.2306251
- S. Haykin and J. M. Fuster, “On cognitive dynamic systems: Cognitive neuroscience and engineering learning from each other,” Proceedings of the IEEE, vol. 102, no. 3, pp. 608–628, 2014.
Office hours: Students can ask appointments for clarifications, explanations on course subjects by sending e-mail at Carlo.Regazzoni@unige.it
CARLO REGAZZONI (President)
SILVANA DELLEPIANE
LUCIO MARCENARO
All class schedules are posted on the EasyAcademy portal.
Project + Oral
Project/Assigned dataset processing Report submission plus oral project discussion
Project can be done either
- producing results using tools introduced in lessons and labs. A data set will be assigned describing a set of multisensorial signals acquired by an agent during a simulated or real experience. A report will have to be produced describing selected tools to allow agent to obtain a generative self awareness model allowing it anomaly detection on future experiences
- considering a student selected application involving a agent and a CDS and producing a poster to discuss how course techniques can be applied on it
Oral will consist in presenting and discussing slides related to the project by highlighting relationships and theoretical aspects of methods introduced in the course
Date | Time | Location | Type | Notes |
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14/01/2021 | 10:15 | GENOVA | Orale | |
28/01/2021 | 10:15 | GENOVA | Orale | |
11/02/2021 | 10:15 | GENOVA | Orale | |
10/06/2021 | 10:15 | GENOVA | Orale | |
24/06/2021 | 10:15 | GENOVA | Orale | |
15/07/2021 | 10:15 | GENOVA | Orale | |
29/07/2021 | 10:15 | GENOVA | Orale | |
26/08/2021 | 10:15 | GENOVA | Orale | |
16/09/2021 | 10:15 | GENOVA | Orale |
Dataset will be assigned at least two weeks before exam and report will have to be presented on Monday before exam date (usually on Thursday) Oral admission will be communicated a day before oral exam.