Alireza Tavakkoli


Ontology type: schema:Person     


Person Info

NAME

Alireza

SURNAME

Tavakkoli

Publications in SciGraph latest 50 shown

  • 2018-11-10 Sensory Fusion and Intent Recognition for Accurate Gesture Recognition in Virtual Environments in ADVANCES IN VISUAL COMPUTING
  • 2018-11-10 GPU Accelerated Non-Parametric Background Subtraction in ADVANCES IN VISUAL COMPUTING
  • 2018 Accurate and Efficient Non-Parametric Background Detection for Video Surveillance in ADVANCES IN VISUAL COMPUTING
  • 2016 An Integrated Cyber-Physical Immersive Virtual Reality Framework with Applications to Telerobotics in ADVANCES IN VISUAL COMPUTING
  • 2016 Automatic Environment Map Construction for Mixed Reality Robotic Applications in ADVANCES IN VISUAL COMPUTING
  • 2013-09 Mathematical modeling of competition for ammonium among Bacteria, Archaea and cyanobacteria within cyanobacterial mats: Can ammonia-oxidizers force nitrogen fixation? in OCEAN SCIENCE JOURNAL
  • 2012 A Novel Gait Recognition System Based on Hidden Markov Models in ADVANCES IN VISUAL COMPUTING
  • 2011 Robust Foreground Detection in Videos Using Adaptive Color Histogram Thresholding and Shadow Removal in ADVANCES IN VISUAL COMPUTING
  • 2010 A Spatio-Spectral Algorithm for Robust and Scalable Object Tracking in Videos in ADVANCES IN VISUAL COMPUTING
  • 2009-10 Non-parametric statistical background modeling for efficient foreground region detection in MACHINE VISION AND APPLICATIONS
  • 2009 Accurate and Efficient Computation of Gabor Features in Real-Time Applications in ADVANCES IN VISUAL COMPUTING
  • 2008 A Visual Tracking Framework for Intent Recognition in Videos in ADVANCES IN VISUAL COMPUTING
  • 2007 A Genetic Approach to Training Support Vector Data Descriptors for Background Modeling in Video Data in ADVANCES IN VISUAL COMPUTING
  • 2007 A Vision-Based Architecture for Intent Recognition in ADVANCES IN VISUAL COMPUTING
  • 2006 A Novelty Detection Approach for Foreground Region Detection in Videos with Quasi-stationary Backgrounds in ADVANCES IN VISUAL COMPUTING
  • 2005 Automatic Robust Background Modeling Using Multivariate Non-parametric Kernel Density Estimation for Visual Surveillance in ADVANCES IN VISUAL COMPUTING
  • Affiliations

    JSON-LD is the canonical representation for SciGraph data.

    TIP: You can open this SciGraph record using an external JSON-LD service: JSON-LD Playground Google SDTT

    [
      {
        "@context": "https://springernature.github.io/scigraph/jsonld/sgcontext.json", 
        "affiliation": [
          {
            "affiliation": {
              "id": "https://www.grid.ac/institutes/grid.462948.5", 
              "type": "Organization"
            }, 
            "isCurrent": true, 
            "type": "OrganizationRole"
          }
        ], 
        "familyName": "Tavakkoli", 
        "givenName": "Alireza", 
        "id": "sg:person.013075650051.60", 
        "sameAs": [
          "https://app.dimensions.ai/discover/publication?and_facet_researcher=ur.013075650051.60"
        ], 
        "sdDataset": "persons", 
        "sdDatePublished": "2019-03-07T13:41", 
        "sdLicense": "https://scigraph.springernature.com/explorer/license/", 
        "sdPublisher": {
          "name": "Springer Nature - SN SciGraph project", 
          "type": "Organization"
        }, 
        "sdSource": "s3://com-uberresearch-data-dimensions-researchers-20181010/20181011/dim_researchers/base/researchers_1465.json", 
        "type": "Person"
      }
    ]
     

    Download the RDF metadata as:  json-ld nt turtle xml License info

    HOW TO GET THIS DATA PROGRAMMATICALLY:

    JSON-LD is a popular format for linked data which is fully compatible with JSON.

    curl -H 'Accept: application/ld+json' 'https://scigraph.springernature.com/person.013075650051.60'

    N-Triples is a line-based linked data format ideal for batch operations.

    curl -H 'Accept: application/n-triples' 'https://scigraph.springernature.com/person.013075650051.60'

    Turtle is a human-readable linked data format.

    curl -H 'Accept: text/turtle' 'https://scigraph.springernature.com/person.013075650051.60'

    RDF/XML is a standard XML format for linked data.

    curl -H 'Accept: application/rdf+xml' 'https://scigraph.springernature.com/person.013075650051.60'


     




    Preview window. Press ESC to close (or click here)


    ...