Alberto Broggi


Ontology type: schema:Person     


Person Info

NAME

Alberto

SURNAME

Broggi

Publications in SciGraph latest 50 shown

  • 2016 Intelligent Vehicles in SPRINGER HANDBOOK OF ROBOTICS
  • 2013 Applications of Computer Vision to Vehicles: An Extreme Test in MACHINE LEARNING FOR COMPUTER VISION
  • 2013 Acceleration Signal Based Linear Formation Driving Model: Algorithmic Description and Simulation Results in COMPUTER AIDED SYSTEMS THEORY - EUROCAST 2013
  • 2013 Active Pedestrian Protection System, Scenario-Driven Search Method for in TRANSPORTATION TECHNOLOGIES FOR SUSTAINABILITY
  • 2012 Active Pedestrian Protection System, Scenario-Driven Search Method for in ENCYCLOPEDIA OF SUSTAINABILITY SCIENCE AND TECHNOLOGY
  • 2012-01 High performance multi-track recording system for automotive applications in INTERNATIONAL JOURNAL OF AUTOMOTIVE TECHNOLOGY
  • 2011 Intelligent Overhead Sensor for Sliding Doors: A Stereo Based Method for Augmented Efficiency in IMAGE ANALYSIS AND PROCESSING – ICIAP 2011
  • 2011 Advanced Safety Sensor for Gate Automation in IMAGE ANALYSIS AND PROCESSING – ICIAP 2011
  • 2011 Fast Vision-Based Road Tunnel Detection in IMAGE ANALYSIS AND PROCESSING – ICIAP 2011
  • 2009 Vehicle Detection Based on Laser Radar in COMPUTER AIDED SYSTEMS THEORY - EUROCAST 2009
  • 2009 Camera-Based Automotive Systems in SMART CAMERAS
  • 2009 Multi Stereo-Based Pedestrian Detection by Daylight and Far-Infrared Cameras in AUGMENTED VISION PERCEPTION IN INFRARED
  • 2009 TerraMax: Team Oshkosh Urban Robot in THE DARPA URBAN CHALLENGE
  • 2009 Boat Speed Monitoring Using Artificial Vision in IMAGE ANALYSIS AND PROCESSING – ICIAP 2009
  • 2008 Intelligent Vehicles in SPRINGER HANDBOOK OF ROBOTICS
  • 2008 Pedestrian Shape Extraction by Means of Active Contours in FIELD AND SERVICE ROBOTICS
  • 2007-12 StereoBox: A Robust and Efficient Solution for Automotive Short-Range Obstacle Detection in EURASIP JOURNAL ON EMBEDDED SYSTEMS
  • 2007 The TerraMax Autonomous Vehicle in THE 2005 DARPA GRAND CHALLENGE
  • 2007 Vision Technologies for Intelligent Vehicles in KNOWLEDGE-BASED INTELLIGENT INFORMATION AND ENGINEERING SYSTEMS
  • 2007 StereoBox: A Robust and Efficient Solution for Automotive Short-Range Obstacle Detection in EURASIP JOURNAL ON EMBEDDED SYSTEMS
  • 2005 A Correlation-Based Approach to Recognition and Localization of the Preceding Vehicle in Highway Environments in IMAGE ANALYSIS AND PROCESSING – ICIAP 2005
  • 2003 IR Pedestrian Detection for Advanced Driver Assistance Systems in PATTERN RECOGNITION
  • 2000 Requirements for Visual Perception of Automotive Environments in MULTIMEDIA VIDEO-BASED SURVEILLANCE SYSTEMS
  • 1999 Addressing real-time requirements of automatic vehicle guidance with MMX technology in PARALLEL AND DISTRIBUTED PROCESSING
  • 1999 Parallel Decomposition of Generic Morphological Structuring Elements in INTERNATIONAL CONFERENCE ON ADVANCES IN PATTERN RECOGNITION
  • 1998-05 Design and Implementation of the PAPRICA Parallel Architecture in JOURNAL OF SIGNAL PROCESSING SYSTEMS
  • 1998 Stereo vision-based obstacle and free space detection in mobile robotics in TASKS AND METHODS IN APPLIED ARTIFICIAL INTELLIGENCE
  • 1997 Experiments on the decomposition of arbitrarily shaped binary morphological structuring elements in IMAGE ANALYSIS AND PROCESSING
  • 1996 Toward the Optimal Decomposition of Arbitrarily Shaped Structuring Elements by Means of a Genetic Approach in MATHEMATICAL MORPHOLOGY AND ITS APPLICATIONS TO IMAGE AND SIGNAL PROCESSING
  • 1995 Data packing vs processing speed on low-cost massively parallel systems: A case study in IMAGE ANALYSIS AND PROCESSING
  • 1991 High-level and low-level computer Vision: Towards an integrated approach in TRENDS IN ARTIFICIAL INTELLIGENCE
  • Affiliations

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