0000000000350085

AUTHOR

Marcello Frixione

0000-0003-4738-6142

showing 18 related works from this author

Conceptual spaces for computer vision representations

2001

A framework for high-level representations in computer vision architectures is described. The framework is based on the notion of conceptual space. This approach allows us to define a conceptual semantics for the symbolic representations of the vision system. In this way, the semantics of the symbols can be grounded to the data coming from the sensors. In addition, the proposed approach generalizes the most popular frameworks adopted in computer vision.

Conceptual spaceSettore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniLinguistics and LanguageHigh level computer visionArtificial IntelligenceComputer vision representationLanguage and Linguistic
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Towards a conceptual representation of actions

2000

An autonomous robot involved in missions should be able to generate, update and process its own actions. It is not plausible that the meaning of the actionsus ed by the robot isgiv en form the outside of the system itself. Rather, this meaning should be anchored to the world through the perceptual abilitiesof the robot. We present an approach to conceptual action representation based on a "conceptual" level that actsasan intermediate level between symbolsand data coming form sensors. Symbolic representations are interpreted by mapping them on the conceptual level through a mapping mechanism based on artificial neural networks.

Cognitive sciencebusiness.industryComputer scienceProcess (engineering)Conceptual model (computer science)Representation (arts)Autonomous robotAction (philosophy)Concept learningRobotArtificial intelligenceMeaning (existential)Motion planningbusiness
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Conceptual Spaces for Cognitive Architectures: A lingua franca for different levels of representation

2017

During the last decades, many cognitive architectures (CAs) have been realized adopting different assumptions about the organization and the representation of their knowledge level. Some of them (e.g. SOAR [Laird (2012)]) adopt a classical symbolic approach, some (e.g. LEABRA [O'Reilly and Munakata (2000)]) are based on a purely connectionist model, while others (e.g. CLARION [Sun (2006)] adopt a hybrid approach combining connectionist and symbolic representational levels. Additionally, some attempts (e.g. biSOAR) trying to extend the representational capacities of CAs by integrating diagrammatical representations and reasoning are also available [Kurup and Chandrasekaran (2007)]. In this p…

FOS: Computer and information sciencesConceptual SpaceCognitive Architectures; Cognitive modeling; Conceptual Spaces; Knowledge representation; Experimental and Cognitive Psychology; Cognitive Neuroscience; Artificial IntelligenceComputer Science - Artificial IntelligenceComputer scienceCognitive NeuroscienceExperimental and Cognitive Psychology02 engineering and technology050105 experimental psychologyCognitive modelingCognitive ArchitecturesConnectionismArtificial IntelligenceConceptual Spaces0202 electrical engineering electronic engineering information engineering0501 psychology and cognitive sciencesSoarCognitive ArchitectureRepresentation (mathematics)Settore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniCognitive scienceKnowledge level05 social sciencesCommon groundCognitionCLARIONDiagrammatic reasoningArtificial Intelligence (cs.AI)Knowledge representation020201 artificial intelligence & image processingThe SymbolicBiologically Inspired Cognitive Architectures
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An associative link from geometric to symbolic representations in artificial vision

1991

Recent approaches to modelling the reference of internal symbolic representations of intelligent systems suggest to consider a computational level of a subsymbolic kind. In this paper the integration between symbolic and subsymbolic processing is approached in the framework of the research work currently carried on by the authors in the field of artificial vision. An associative mapping mechanism is defined in order to relate the constructs of the symbolic representation to a geometric model of the observed scene.

Artificial Intelligence; Knowledge Representation; Artificial Visionbusiness.industryComputer scienceIntelligent decision support systemKnowledge RepresentationField (computer science)Artificial IntelligenceArtificial visionArtificial VisionThe SymbolicArtificial intelligencebusinessRepresentation (mathematics)Geometric modelingLink (knot theory)Associative property
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A Hybrid Neural Network Architecture for Dynamic Scene Understanding

1997

A hyprdid (neural and symbolic) architecture allowing for a deep understanding of moving scenes is described. The architecture is based on a working and effective integration among three levels of representation of data coming out from external sensors.

Hybrid neural networkbusiness.industryComputer scienceRepresentation (systemics)Coming outComputer visionArtificial intelligenceArchitecturebusiness
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Anchoring symbols to conceptual spaces: the case of dynamic scenarios.

2003

In recent years, there have been several proposals for the realization of models inspired to biological solutions for pattern recognition. In this work we propose a new approach, based on a hierarchical modular structure, to realize a system capable to learn by examples and recognize objects in digital images. The adopted techniques are based on multiresolution image analysis and neural networks. Performance on two different data sets and experimental timings on a single instruction multiple data (SIMD) machine are also reported.

Conceptual spaceSettore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniAnchoringComputer sciencebusiness.industryGeneral MathematicsRepresentation (systemics)AnchoringComputer Science Applications1707 Computer Vision and Pattern RecognitionCognitive architectureComputer Science ApplicationsAction representationRobot visionControl and Systems EngineeringSituation calculuMathematics (all)Artificial intelligenceSituation calculusbusinessCognitive roboticsSoftware
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Symbolic and conceptual representation of dynamic scenes: Interpreting situation calculus on conceptual spaces

2001

In (Chella et al. [1,2]) we proposed a framework for the representation of visual knowledge, with particular attention to the analysis and the representation of scenes with moving objects and people. One of our aims is a principled integration of the models developed within the artificial vision community with the propositional knowledge representation systems developed within symbolic AI. In the present note we show how the approach we adopted fits well with the representational choices underlying one of the most popular symbolic formalisms used in cognitive robotics, namely the situation calculus.

Descriptive knowledgeKnowledge representation and reasoningComputer sciencebusiness.industryRepresentation (systemics)RoboticsConceptual spaceArtificial intelligenceSituation calculusbusinessCognitive roboticsSymbolic data analysis
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Knowledge representation for robotic vision based on conceptual spaces and attentive mechanisms

1995

A new cognitive architecture for artificial vision is proposed. The architecture is aimed for an autonomous intelligent system, as several cognitive hypotheses have been postulated as guidelines for its design. The design is based on a conceptual representation level between the subsymbolic level processing the sensory data, and the linguistic level describing scenes by means of a high-level language. The architecture is also based on the active role of a focus of attention mechanism in the link between the conceptual and the linguistic level. The link between the conceptual level and the linguistic level is modelled as a time-delay attractor neural network.

Cognitive scienceVision basedKnowledge representation and reasoningMechanism (biology)Computer sciencebusiness.industryRepresentation (systemics)CognitionCognitive architectureKnowledge RepresentationFocus (linguistics)Artificial IntelligenceArtificial Vision; Artificial Intelligence; Knowledge RepresentationArtificial VisionArtificial intelligenceArchitecturebusiness
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A hybrid scheme for action representation

1993

Strong deficiencies are present in symbolic models for action representation and planning, regarding mainly the difficulty of coping with real, complex environments. These deficiencies can be attributed to several problems, such as the inadequacy in coping with incompletely structured situations, the difficulty of interacting with visual and motorial aspects, the difficulty in representing low-level knowledge, the need to specify the problem at a high level of detail, and so on. Besides the purely symbolic approaches, several nonsymbolic models have been developed, such as the recent class of subsym-bolic techniques. A promising paradigm for the modeling of reasoning, which combines feature…

Knowledge representation and reasoningbusiness.industryComputer scienceAnalogical modelsInferenceHybrid approachSymbolic data analysisTheoretical Computer ScienceHuman-Computer InteractionArtificial IntelligenceAdaptive systemThe SymbolicArtificial intelligencebusinessHybrid modelSoftwareInternational Journal of Intelligent Systems
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Conceptual spaces for anchoring

2003

Cognitive scienceControl and Systems EngineeringComputer scienceGeneral MathematicsAnchoringSoftwareComputer Science ApplicationsRobotics and Autonomous Systems
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An architecture for autonomous agents exploiting conceptual representations

1998

An architecture for autonomous agents is proposed that integrates the functional and the behavioral approaches to robotics. The integration is based on the introduction of a conceptual level, linking together a subconceptual, behavioral, level, and a linguistic level, encompassing symbolic representation and data processing. The proposed architecture is described with reference to an experimental setup, in which the robot task is that of building a significant description of its working environment. © 1998 Elsevier Science B.V. All rights reserved.

Active visionConceptual spaceSettore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniHybrid processingRepresentation levelbusiness.industryComputer scienceGeneral MathematicsAutonomous agentComputer Science Applications1707 Computer Vision and Pattern RecognitionRoboticsComputer Science ApplicationsControl and Systems EngineeringApplications architectureSystems architectureMathematics (all)RobotArtificial intelligenceReference architectureArchitecturebusinessSoftware
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Was King Arthur a King by Definition?

1988

Current research in knowledge representation distinguishes between descriptional and assertional interpretations of semantic nets. This paper explores theoretical and applicative problems, which arise from that distinction in a historic domain. A prolog implementation of KL-ONE is used as a vehicle to compare the various alternatives available to represent knowledge related to single elements of the domain insertion or not of this knowledge in semantic nets in their descriptional sense. The final section of the paper discusses the problem in relation to the theories concerning the functioning of proper names from a logical and philosophical point of view.

Relation (database)Knowledge representation and reasoningPoint (typography)Computer sciencebusiness.industryDomain (software engineering)EpistemologyPrologArtificial IntelligenceLogical conjunctionSection (archaeology)Proper nounArtificial intelligencebusinesscomputercomputer.programming_languageAI Communications
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Understanding dynamic scenes

2000

We propose a framework for the representation of visual knowledge in a robotic agent, with special attention to the understanding of dynamic scenes. According to our approach, understanding involves the generation of a high level, declarative description of the perceived world. Developing such a description requires both bottom-up, data driven processes that associate symbolic knowledge representation structures with the data coming out of a vision system, and top-down processes in which high level, symbolic information is in its turn employed to drive and further refine the interpretation of a scene. On the one hand, the computer vision community approached this problem in terms of 2D/3D s…

Linguistics and LanguageKnowledge representation and reasoningComputer scienceMachine visionProcess (engineering)media_common.quotation_subjectRepresentation levelsLanguage and LinguisticsMotion (physics)Data-drivenArtificial IntelligenceHuman–computer interactionPerceptionConceptual spacesArtificial visionLanguage and Linguisticmedia_commonSettore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniHybrid processingbusiness.industryRepresentation (systemics)RoboticsProcessesAction (philosophy)PerceptionArtificial intelligencebusinessActionsNeural networksArtificial Intelligence
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<title>HAP: a hybrid system for reasoning about actions and plans in robotics</title>

1990

The paper describes the main ideas and principles of HAP (Hybrid representation of Actions and Plans), a system for hybrid representation and reasoning in advanced robotics. In this context, hybrid representation refers to the integration of both symbolic and analogic knowledge representation paradigms. In particular, the logic/symbolic component is based on a KL-ONE-like representation language. The system embeds "analogic experts", that are concurrent procedures operating in a direct and fast way on the world representation. These "experts" help the system in planning a correct temporal sequence of actions. As a reference scenario, assembly (and disassembly) problems are considered. The a…

Knowledge representation and reasoningComputer sciencebusiness.industryHybrid systemComponent (UML)Obstacle avoidanceRepresentation (systemics)RobotRoboticsContext (language use)Artificial intelligencebusinessSPIE Proceedings
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A cognitive architecture for robot self-consciousness

2008

Objective: One of the major topics towards robot consciousness is to give a robot the capabilities of self-consciousness. We propose that robot self-consciousness is based on higher order perception of the robot, in the sense that first-order robot perception is the immediate perception of the outer world, while higher order perception is the perception of the inner world of the robot. Methods and material: We refer to a robot cognitive architecture that has been developed during almost 10 years at the RoboticsLab of the University of Palermo. The architecture is organized in three computational areas. The subconceptual area is concerned with the low level processing of perceptual data comi…

Personal robotSocial robotConsciousnessComputer sciencebusiness.industrymedia_common.quotation_subjectMedicine (miscellaneous)RoboticsRoboticsCognitive architectureRobot learningMobile robot navigationRobotics machine consciousnessArtificial IntelligencePerceptionRobotArtificial intelligencebusinessmedia_commonArtificial Intelligence in Medicine
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Planning by imagination in Cicerobot, a robot for museum tours

2005

Planningrobotconsciousness
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A cognitive architecture for artificial vision

1997

Abstract A new cognitive architecture for artificial vision is proposed. The architecture, aimed at an autonomous intelligent system, is cognitive in the sense that several cognitive hypotheses have been postulated as guidelines for its design. The first one is the existence of a conceptual representation level between the subsymbolic level, that processes sensory data, and the linguistic level, that describes scenes by means of a high level language. The conceptual level plays the role of the interpretation domain for the symbols at the linguistic levels. A second cognitive hypothesis concerns the active role of a focus of attention mechanism in the link between the conceptual and the ling…

Cognitive modelActive visionLinguistics and LanguageRepresentation levelComputer sciencemedia_common.quotation_subjectGeometric reasoningRepresentation levelsLanguage and LinguisticsArtificial IntelligencePerceptionConceptual spacesLIDAArchitectureActive visionLanguage and Linguisticmedia_commonConceptual spaceSettore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniCognitive scienceHybrid processingbusiness.industryCognitionSpatial intelligenceCognitive architectureRoboticsRoboticPerceptionArtificial intelligencebusinessSpatial reasoningArtificial Intelligence
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Perceptual Anchoring via Conceptual Spaces

2004

Perceptual anchoring is the problem of creating and maintaining in time the connection between symbols and sensor data that refer to the same physical objects. This is one of the facets of the general problem of integrating symbolic and non-symbolic processes in an intelligent system. Gärdenfors’ conceptual spaces provide a geometric treatment of knowledge which bridges the gap between the symbolic and subsymbolic approaches. As such, they can be used for the study of the anchoring problem. In this paper, we propose a computational framework for anchoring based on conceptual spaces. Our framework exploits the geometric structure of conceptual spaces for many of the crucial tasks of anchorin…

conceptual spacesRobotic
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