This paper addresses the problem of detecting people in two dimensional range scans. Previous approaches have mostly used pre-defined features for the detection and tracking of people. We propose an approach that utilizes a su-pervised learning technique to create a classifier that facilitates the detection of people. In particular, our approach applies AdaBoost to train a strong classifier from simple features of groups of neighboring beams corresponding to legs in range data. Experimental results carried out with laser range data illustrate the robustness of our approach even in cluttered office environments
Human detection is an important research topic for many researchers who are working with surveillanc...
This paper proposes a generic procedure for training a scene specific people detector by exploiting ...
Detecting and tracking people in populated environments has various applications including, robotics...
This paper addresses the problem of detecting people in two dimensional range scans. Previous approa...
People detection is a key capacity for robotics systems that have to interact with humans. This pape...
Abstract — This paper addresses the problem of detecting people using multiple layers of 2D range sc...
Abstract People detection is a key capacity for robotics systems that have to interact with humans. ...
People tracking is a key technology for autonomous systems, intelligent cars and social robots opera...
Abstract—People detection is an important capability both for human-robot interaction in service rob...
Abstract — People detection in 2D laser range data is a popu-lar cue for person tracking in mobile r...
Recent improvements in deep learning techniques applied to images allow the detection of people with...
People detection in 2D laser range data is widely used in many application, such as robotics, smart ...
With a growing number of robots deployed in populated environments, the ability to detect and track ...
This paper presents a robust and real-time method for people detection in urban and crowed environme...
Detecting and tracking people using 2D laser rangefinders (LRFs) is challenging due to the features ...
Human detection is an important research topic for many researchers who are working with surveillanc...
This paper proposes a generic procedure for training a scene specific people detector by exploiting ...
Detecting and tracking people in populated environments has various applications including, robotics...
This paper addresses the problem of detecting people in two dimensional range scans. Previous approa...
People detection is a key capacity for robotics systems that have to interact with humans. This pape...
Abstract — This paper addresses the problem of detecting people using multiple layers of 2D range sc...
Abstract People detection is a key capacity for robotics systems that have to interact with humans. ...
People tracking is a key technology for autonomous systems, intelligent cars and social robots opera...
Abstract—People detection is an important capability both for human-robot interaction in service rob...
Abstract — People detection in 2D laser range data is a popu-lar cue for person tracking in mobile r...
Recent improvements in deep learning techniques applied to images allow the detection of people with...
People detection in 2D laser range data is widely used in many application, such as robotics, smart ...
With a growing number of robots deployed in populated environments, the ability to detect and track ...
This paper presents a robust and real-time method for people detection in urban and crowed environme...
Detecting and tracking people using 2D laser rangefinders (LRFs) is challenging due to the features ...
Human detection is an important research topic for many researchers who are working with surveillanc...
This paper proposes a generic procedure for training a scene specific people detector by exploiting ...
Detecting and tracking people in populated environments has various applications including, robotics...